Conference Agenda

Overview and details of the sessions and sub-session of this conference. Please select a date or session to show only sub-sessions at that day or location. Please select a single sub-session for detailed view (with abstracts and downloads if available).

Please note that all times are shown in CEST. The current conference time is: 13th Dec 2021, 09:45:56am CET

 
 
Session Overview
Session
Dr4 YSPS.1.1: Young Scientists Poster Session on Land & Cal/Val
Time:
Monday, 19/July/2021:
10:15am - 1:00pm

Workshop: Dragon 4


10:15-11:15 CEST     Poster Session (for all participants)

11:15-11:30                 BREAK

11:30-13:00 CEST     Poster Session (for adjudicators & poster authors)


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Presentations
Poster
ID: 283 / Dr4 YSPS.1.1: 1
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 38577 - Earthquake Precursors from Space and Ground Detecting Seismic Anomalies from Satellite and Ground Data with Multiple Parameters

EOF Analysis Application in Detecting Potential Pre-Earthquake Anomalies from Swarm Satellite Data

Maja Pavlovic1, Yaxin Bi1, Peter Nicholl1, Xueming Zhang2

1Ulster University, United Kingdom; 2Institute of Earthquake Forecasting, China Earthquake Administration

The goal of this work was to examine the potential of the General Empirical Orthogonal Function (EOF), also known as Principal Component Analysis (PCA), in detecting anomalous earthquake precursory variations in Earth’s ionosphere - litosphere geomagnetic system. For this purpose, two major earthquake episodes in China have been selected. M6.0 quake, with epicentre at 39.835°N, 77.108°E, 86 km ENE of Arzak, which occurred on 19.01.2020, and the M6.3 quake, with epicentre at 33.144°N, 86.864°E in western Xizang, on 22.07.2020. The spatial-temporal variability patterns in an ~800 km radius of earthquake epicentres were calculated using geomagnetic data, collected at 1 Hz by Vector Field Magnetometer onboard SWARM A, B and C, ESA’s low earth orbiting satellites. The total magnetic field was calculated, transformed into the NEC frame, and corrected for the impact of Earth’s core magnetism via CHAOS model. Analysis was able to identify eight significant EOF and PC components on a 3 - month and 1- year time scale. The results were observed in earthquake’s seismo-tectonic context, and with planetary geomagnetic storm activity indices K and A, to reduce the possible influence of other anomaly sources. Anomalous patterns in EOF and PC components were revealed along and on borders of the local tectonic fault lines and around earthquake epicentres. At the time when anomalous patterns occurred, examined geomagnetic A and K storm indices were indicative of quiet periods, strongly suggesting the pre-cursory connection between detected geomagnetic anomalies and subsequent earthquake events.



Poster
ID: 282 / Dr4 YSPS.1.1: 2
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 38577 - Earthquake Precursors from Space and Ground Detecting Seismic Anomalies from Satellite and Ground Data with Multiple Parameters

An Enhanced Martingale Method for Detecting Seismic Precursors from Swarm Satellite Data

Shane Patrick Harrigan1, Yaxin Bi1, Mingju Huang2, Guoze Zhao3

1School of Computing, Faculty of Computing, Engineering and the Built Environment, Ulster University, Jordanstown Road, Newtownabbey, Co Antrim, UK; 2Belfast School of Architecture and the Built Environment, Faculty of Computing, Engineering and the Built Environment, Ulster University, Jordanstown Road, Newtownabbey, Co Antrim, UK; 3Institute of Geology, China Earthquake Administration, Beijing 100029, China

The detection of seismic activity precursor signs as part of an alarm system will provide opportunities for minimization of the social and economic impact seismic events such as earthquakes cause. It has long been theorized that the Earth's electromagnetic field could contain precursor signs before a seismic event with a growing body of empirical evidence. The ability to measure and monitor electromagnetic field activity has increased with each passing year as more sensors and methodologies emerge; missions such as Swarm have enabled researchers to access near-continuous observations of electromagnetic activity at second intervals allowing for more detailed and exciting studies.

This poster presents an approach designed to detect precursor anomalies in electromagnetic field data from Swarm satellites and initial analysis results. This works towards developing a continuous and effective monitoring system of seismic activities based on the already deployed tools of Swarm available. We develop an enhanced form linear probabilistic model based on the martingale probability theories that test the null hypothesis to indicate abnormal changes in electromagnetic field activity. We test this enhanced approach in two experiments; firstly, we perform a quantitative comparison on well-understood and popular datasets alongside the classic approach. We find that the enhanced version does not negatively affect the performance of the underlying theory and instead produces more accurate anomaly detections overall. Secondly, we use three case studies of seismic activity (namely earthquakes in Mexico, Greece, and Croatia) to assess our approach. For each case study, we use two grids (500x500km and 1000x1000km, respectively) centered on the epicenters of the earthquakes and found that our method could detect anomalous phenomena in the electromagnetic data months ahead of the seismic activity when focused on these specific regions, thereby leading up to the study's seismic events.



Poster
ID: 146 / Dr4 YSPS.1.1: 3
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32278 - Three- and Four-Dimensional Topographic Measurement and Validation

Structural Health Monitoring for Sea Crossing Bridge Integrating Time-series InSAR Analysis and Structural Principle

Xiaoqiong Qin1,2,3,4, Chisheng Wang1,3,4, Mingsheng Liao2, Qingquan Li1,2,3,4, Lu Zhang2

1School of Architecture & Urban Planning, Shenzhen University; 2State Key Laboratory of Engineering in Surveying, Mapping and Remote Sensing, Wuhan University; 3MNR Key Laboratory for Geo-Environmental Monitoring of Great Bay Area; 4Guangdong Key Laboratory of Urban Informatics

Sea Crossing Bridge can cross bays, straits, and deep marine water, which are critical nodes to ensure the smooth flow of traffic arteries on the mainland. Even subtle displacements may affect the performance of bridges and cause high maintenance and repair costs. In order to timely and accurately inspect their structural safety status, the Synthetic Aperture Radar Interferometry (InSAR) technique which can quickly extract surface deformation over a large area at fine resolution, with low labor and material costs, and no effects on bridge normal operation, has been established as an effective method for bridge structural health monitoring.

Considering the complex structure and environmental effects of the Sea Crossing Bridge, there are still some issues to be solved to achieve the InSAR based structural health monitoring. First of all, the density and accuracy of point targets (PTs) are low on structures with significant de-coherence effects, leaving how to extract dense and accurate PTs upon partially coherent Sea Crossing Bridge still a problem. Moreover, previous thermal dilation monitoring methods relied on the linear deformation assumption of PTs without considering the actual structural mechanics of bridges, which are not appropriate for long-span Sea Crossing Bridge with long thermal dilation propagation distance. Finally, SAR side-looking imaging geometric distortion and simple analysis of bridge linear deformation maps are difficult for non-expert users to understand, making the InSAR results interpretation difficult.

Aiming at the above issues, the goal of this study is to develop a measurement and analysis method to detect the global deformation of the Sea Crossing Bridge quickly and accurately by introducing the structural principle into the conventional time-series InSAR analysis. As for the PTs selection, the structural coherent and non-coherent information of the bridge are considered to improve the density and accuracy of detectable PTs. In terms of thermal dilation modelling, a structural-driven regression analysis method is applied to establish a quantitative relationship between the temperature and the displacement. In order to provide user friendly results, the 3D visualization of deformation results is realized based on the bridge structural information and local observation geometric parameters, and the 3D visualized analysis results and structural theory are integrated for bridge structural health monitoring.

Taking the East Sea Bridge as an example, the detail deformation along the bridge is estimated by processing Sentinel-1 images from 2015 to 2017 based on the above method. After modelling and separating the thermal dilation along the bridge, the structural risk level is evaluated based on the comprehensive analysis of structural risk indicators and structural deformation. Risk sections along the bridge are identified, which would be helpful in guiding the management and maintenance, as well as disaster prevention of the Donghai Bridge.

Qin-Structural Health Monitoring for Sea Crossing Bridge Integrating Time-series InSAR Analysis and_Cn_version.pdf


Poster
ID: 300 / Dr4 YSPS.1.1: 4
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 38577 - Earthquake Precursors from Space and Ground Detecting Seismic Anomalies from Satellite and Ground Data with Multiple Parameters

Earthquake Electromagnetic Precursor Anomalies Detected by The CSELF Network

Bingbing Han1, Guoze Zhao1, Yaxin Bi2, Ji Tang1, Lifeng Wang1, Yan Zhan1

1China Earthquake Administration, China, People's Republic of; 2School of Computing, Faculty of Computing, Engineering and the Built Environment, University of Ulster, Belfast BT37 0QB, United Kingdom

The first electromagnetic observation network, consisting of 30 stations and covering the Beijing Capital Area(BCA) and the regions of North South Seismic Belt(NSSB) in China, has been built recently under the support of the National Development and Reform Commission of China. The network is designed to record the natural electromagnetic signal from 1000Hz to 1000s and powered transmitted electromagnetic signal from 300Hz to 0.1Hz, including five components Ex (NS electric field), Ey (EW electric field), Hx (NS magnetic field), Hy (EW magnetic field) , and Hz( vertical magnetic field) at each station of the network. The electromagnetic time series, spectrum, apparent resistivity and impedance phase etc. are the parameters used to study possible anomalies before earthquakes.

In this report, we present the case studies, discovering the precursor of apparent resistivity prior to Yangbi EQ (M=5.1) which occurred on March 27, 2017 near Dali city in Yunnan province. The epicenter depth is about 12km, which was located in the west of Nanjianweishan fault which is part of big Honghe fault belt. The earthquake mechanism solution is dextral strike-slip. Dali station (YX) is the nearest station to the epicenter with 32km distance and locates to the east of the Nanjianweishan fault. The study found that both polarizations of apparent resistivity ρxy and ρyx for natural signal started to gradually increase in pulse type from January 16, 2017 (about 10 weeks before EQ). They reached the maximum on March 15, 2017 (12 days before the EQ) and then rapidly decreased to the background reference value on March 23-24, 2017 (3-4 days before EQ). At the same time the variation amplitude of anomalous ρxy is bigger than that of ρyx. For the ρxy the values of single pulses of anomalous resistivity are generally 30-80% bigger than the background value. The maximum value is about 130% larger than the background value. Correspondingly, both impedance phase φxy and φyx firstly gradually decreased and recovered to the background value again before the earthquake. The variation amplitude of anomalous impedance phase φxy is larger than that for φyx.

Another kind of apparent resistivity anomaly has been observed before the Jinggu earthquake (Ms=5.9) which occurred in Jinggu county in Yunnan province on December 6, 2014. The apparent resistivity ρxy decreased gradually from 80Ω·m before the earthquake. The resistivity suddenly decreased to 60 Ω·m on the day when the earthquake happened. After the earthquake the resistivity remains active for five months.

In addition, spectrum variations of electro-magnetic field with one year period have been observed for almost all stations using the continuous data recorded for several years, which is different from traditional feature of the spectrum variation. According to the powered transmitted data the anomalous increase of electromagnetic field are also found before some earthquake events.



Poster
ID: 201 / Dr4 YSPS.1.1: 5
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32278 - Three- and Four-Dimensional Topographic Measurement and Validation

3D SAR Imaging of Natural Media and Geophysical Parameter Retrieval

Mauro Mariotti d'Alessandro1, Yanghai Yu1,2, Xinwei Yang2, Yu Bai3, Stefano Tebaldini1, Mingsheng Liao2, Wen Yang3

1Politecnico di Milano, Italy; 2State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University; 3School of Electronic Information, Wuhan University

The research has focused on defining new processing methods for high-resolution 3D imaging of the interior of forests and glaciers and the characterization of their temporal behavior, in view of future application in the context of future low frequency Missions such as BIOMASS and Rose-L. The following questions were addressed: i) What will be the impact of changing weather conditions on AGB retrieval based on BIOMASS Tomographic data and Interferometric data? What is the most accurate signal processing approach for forest height retrieval based on tomographic data? What are the driving requirements for very high-resolution tomographic imaging of natural scenarios?

As spaceborne Tomographic data are not available as of today, the research made use of data acquired in the context of dedicated ground-based and airborne campaigns by ESA, including the P-Band airborne campaigns BioSAR 1, AfriSAR, the L-Band airborne campaign AlpTomoSAR, and the P-Band ground-based campaign TropiScat.

Temporal effects were studied on an experimental basis using data from the ground-based campaign TropiSCAT and from the two airborne campaigns BioSAR 1 and AfriSAR. TropiSCAT data were used to directly mimic BIOMASS acquisitions by analyzing tomograms formed by taking the signals acquired by different antennas on different days. Since BIOMASS tomography will be implemented by taking acquisitions each separated by three days, we considered tomograms obtained by taking two TropiS-CAT antennas every 3 days (and three antennas on the last day), which means that any single tomogram can be obtained by mixing seven different days. We refer to these tomograms as “7-day tomograms.” Each 7-day tomogram is associated with an “instantaneous tomogram” obtained by taking all 15 antennas at 6:00 a.m. on the seventh day, which is used as reference. Tomographic processing is then carried out by focusing the acquisitions from seven days in ground range-height coordinates by time-domain back projection. As a result, it was possible to form 66 7-day tomograms, of which 61 included acquisitions with both sunny and rainy days, so as to provide a clear experimental assessment of the radiometric error due to changing weather conditions. The error was then translated to an AGB retrieval error based on the observed sensitivity of tomographic data to forest biomass at the TropiSCAT site, which was known from air-borne measurements.

The evaluation of the impact of temporal decorrelation on AGB retrieval based on in-terferometric data was carried out with reference to the ground-cancellation technique. The technique consists in a coherent combination of two or three SAR images that allows to cancel out the ground echo and emphasize canopy backscattering, and it is currently assumed as the baseline retrieval approach for BIOMASS. Our analysis consisted in implementing the ground-cancellation technique using airborne campaign data acquired on the same day and on different days (time lags of 4, 5, and 9 days). In so-doing, we were able to provide a direct measurement of the radiometric error due to temporal decorrelation.

Optimal processing for forest height retrieval was addressed by implementing and comparing two different approaches: 1) parametric height estimation by minimizing the least-square problem between random volume over ground (RVoG) model predictions and multibaseline SAR data and 2) thresholding the vertical backscattering obtained by tomographic focusing. Both approaches were applied to the case of P-Band data collected during the AfriSAR campaign, and validated against Lidar measurements.

Optimal processing of tomographic data was addressed by studying imaging arte-facts that arise when conventional one-dimensional (1D) focusing methods, such as beamforming or Capon filtering, are applied to process data collected using large-ly-spaced and/or largely-irregular trajectories. A new processing method was proposed to produce high-quality imaging while largely reducing the computational burden, and without having to process the original raw data. The analysis was validated by results from numerical simulations as well as from real airborne data from the ESA campaign AlpTomoSAR.

Results from TropiSCAT clearly indicate that canopy scattering is more stable than ground scattering level, consistently with the physical explanation that ground scattering is more affected by changing moisture conditions. Based on previous studies at the same test-site, the observed variation of 1–1.5 dB in the 7-day tomograms would entail a bio-mass retrieval error of around 50–80 t/ha, which is on the order about 20% or better. The analysis of ground-cancelled images was particularly relevant as directly linked to AGB retrieval algorithms to be implemented for the BIOMASS Mission. In accordance with theoretical models, experiments indicate that temporal decorrelation mostly affects scarcely vegetated areas, whereas in high biomass regions levels the radiometric error is limited to within 1dB. Overall, these results support the feasibility of extracting accurate biophysical information from repeat-pass BIOMASS data, concerning both the tomographic and the interferometric phase of the Mission.

The research on temporal effects was not limited to a quantification of the resulting errors, but also on the development of signal processing methods to compensate for such effects.

As for forest height retrieval, results indicate that the best approach could result from a joint use of non-parametric and parametric methods, to merge the capability of mod-el-based retrieval to work without requiring parameter tuning and the computational efficiency and accuracy of SAR tomography.

Finally, the work on AlpTomoSAR data fully demonstrates that the quality of a tomographic airborne surveys is not limited in any sense by platform stability during the acquisition, under the condition that tomographic processing is correctly implemented, therefore supporting the possibility of tomographic imaging using small satellite formation.

Mariotti dAlessandro-3D SAR Imaging of Natural Media and Geophysical Parameter Retrieval-201Poster4_Cn_version.pdf
Mariotti dAlessandro-3D SAR Imaging of Natural Media and Geophysical Parameter Retrieval-201Poster4_ppt_present.pdf


Poster
ID: 162 / Dr4 YSPS.1.1: 6
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32278 - Three- and Four-Dimensional Topographic Measurement and Validation

Detecting And Monitoring Of Slow-moving Post-earthquake Landslide By InSAR Technology In Jiuzhaigou Area

Jiehua Cai1, Lu Zhang1, Mingsheng Liao1, Jie Dong2

1State Key Laboratory of EInformation ngineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan 430079 China; 2School of Remote Sensing and Information Engineering, Wuhan University, Wuhan 430079 China

On 8th August 2017, a magnitude Mw 6.5 earthquake occurred in the County of Jiuzhaigou in Sichuan Province, China (USGS, https://earthquake.usgs.gov/). Because of its high magnitude and shallow epicenter, the earthquake caused grave casualties and property losses. Furthermore, the earthquake triggered numerous secondary mountain disasters such as rockfall and landslide. Shortly after the Jiuzhaigou earthquake, some studies had assessed the number, distribution and other characteristics of the coseismic landslides based on pre- and post-event remote sensing data. However, slow-moving post-earthquake landslides don’t show visible change at short notice and are often neglected by the common change detection method. These slow-moving landslides will pose a long-term potential threat to people’s life and property. Therefore, a detailed monitoring of the slow-moving landslides is crucial to post-earthquake recovery and reconstruction.

Synthetic aperture radar interferometry (InSAR) technology, which has large ground coverage and high spatial resolution, has great advantages for geological disaster observation under all weather conditions. It has been utilized in ground surface deformation measuring of landslide for disaster detection and assessment. In this research, we adopt an optimized strategy that combines D-InSAR technique with SBAS InSAR to accurately detect and monitor the slow-moving post-earthquake landslides in Jiuzhaigou area. Firstly, we carry out a quick detection across wide area using differential InSAR (DInSAR) technique with 6 ALOS‐2 PALSAR‐2 ascending images. To retrieve the temporal evolution of these landslides, a detailed monitoring of specific landslides is carried out using the short baseline subset InSAR (SBAS-InSAR) during the period from 2007 to 2019. Combining with other multi-source data (including field investigation, LiDAR and optical image), we perform an in-depth analysis of the impact of the 2017 Jiuzhaigou earthquake on slow-moving post-earthquake landslides.

The results show that there are 16 slow-moving post-earthquake landslides which can be detected by InSAR analyses in Jiuzhaigou area, including 8 landslides close to residential areas. These landslides are mainly distributed in the NE plate (active plate), and the slide directions mainly are east (including 9 landslides) and southeast (include 5 landslides). Secondly, we found that the earthquake’s impact on the slow-moving landslides can mainly be classified into three categories: (a) accelerating the active historical landslides that were already sliding before the earthquake; (b) reactivating the stable historical landslides which were undisturbed before the earthquake; (c) directly triggering the landslides that had stable geological environment before the earthquake. For each case, we demonstrate some case studies of landslide affected by the earthquake, and perform a detailed analysis combining with multi-source data.

Cai-Detecting And Monitoring Of Slow-moving Post-earthquake Landslide-162Poster4_Cn_version.pdf


Poster
ID: 340 / Dr4 YSPS.1.1: 7
Poster for Dragon 4
Land & Environment: 32248 - Earth Observation Based Urban Services for Smart Cities and Sustainable Urbanization

Impact Of Ecological Water Compensation On Urban Safety Along Yongding River (Beijing Section)

Mingliang Gao1,2,3,4, Huili Gong1,2,3,4, Xiaojuan Li1,2,3, Yinghai Ke1,3, Beibei Chen1,2,3,4, Mi Chen1,2, Chaofan Zhou1,2,3,4, Min Shi1,2,3, Mingyuan Lv1,2

1Capital Normal University, China, People's Republic of; 2Key Laboratory of Land Subsidence Mechanism and Prevention, MOE, People's Republic of; 3Beijing Laboratory of Water Resources Security, China, People's Republic of; 4Observation and Research Station of Groundwater and Land Subsidence in Beijing-Tianjin-Hebei Plain, MNR, People's Republic of

Yongding River Basin Ecological Repair is an important issue. the coordinated development of beijing-tianjin-hebei, South-to-North Water Diversion, and local comprehensive background such as groundwater recharge, along the river yongding river ecological hydrating uncertainty of the problems of groundwater system, ground stability, and urban security risk is an important scientific problems. This topic is comprehensive satellite remote sensing data, traditional hydrogeological formation and groundwater measured data, integrated GIS spatiotemporal analysis, time series decomposition, wavelet analysis and neural network model, etc., analyzing Yongding River (Beijing Section) affects groundwater flow field evolution and surface The deformation response process, and the effect of Ecological compensation on urban safety in the Ecological compensation of the Yongding River is evaluated as an example of building stability, underground rail traffic safety and Beijing Daxing International Airport. The research results of the topic can provide technical support for evaluating the effects of Yongding River ecological water compensation on the stability of coastal formation, providing a scientific basis for urban security risk assessments, providing scientific reference for avoiding the negative impact of water compensation of Yongding River.

Gao-Impact Of Ecological Water Compensation On Urban Safety Along Yongding River-340Poster4_Cn_version.pdf
Gao-Impact Of Ecological Water Compensation On Urban Safety Along Yongding River-340Poster4_ppt_present.pdf


Poster
ID: 344 / Dr4 YSPS.1.1: 8
Poster for Dragon 4
Land & Environment: 32248 - Earth Observation Based Urban Services for Smart Cities and Sustainable Urbanization

Built-Up Area Mapping at Large-Scale using Sentinel-1 SAR Data and Deep Learning

Sebastian Hafner, Yifang Ban, Andrea Nascetti

KTH Royal Institute of Technology, Sweden

Today, more than half of the world population is living in cities. This number is growing rapidly and by the middle of the 21st century, two thirds of the global population is projected to reside in urban areas. Earth Observation (EO) has become a valuable tool to provide up-to-date and reliable maps of urban areas needed to support sustainable city planning. Past studies demonstrated that Synthetic Aperture Radar (SAR) is effective in detecting built-up areas. Recently, deep learning algorithms, specifically Convolutional Neural Networks (CNNs), have gained popularity for built-up area mapping from Sentinel-2 MultiSpectral Instrument (MSI) data. The lack of cloud-free data may, however, hamper the updatability of optical-based built-up area mapping. In contrast to Sentinel-2, the Sentinel-1 SAR is able to acquire data in cloudy conditions as well as during day and night.

In this research, we explored the potential of Sentinel-1 SAR data for built-up area mapping at large-scale using deep learning. Specifically, a light-weight U-Net model was trained in the United States by leveraging open data (i.e., Microsoft building footprints) as labels. We assessed model performance in Beijing, China using 10,000 validation points and compared our results to a state-of-the-art product generated using Sentinel-2 MSI data and deep learning . Our results demonstrate that built-up areas can be accurately mapped by SAR and deep learning (F1 score 0.863). Moreover, the proposed approach using transfer learning produced comparable results in Beijing to the state-of-the-art product using local training. However, further research investigating the model transferability to a diverse set of cities is required.

Hafner-Built-Up Area Mapping at Large-Scale using Sentinel-1 SAR Data and Deep Learning-344Poster4_ppt_present.pdf


Poster
ID: 116 / Dr4 YSPS.1.1: 9
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32278 - Three- and Four-Dimensional Topographic Measurement and Validation

Experimental Analyses of Forest Short-Term Decorrelation for Interferometry, Tomography with Tandem SARs, and Distributed SARs

Fabrizio Lombardini1, Claudia Zoppetti1,2, Reza Bordbari1

1University of Pisa, Italy; 2University of Siena, Italy

In the framework of developments of 3D forest [1-3] SAR Tomography (Tomo-SAR), the issue of extensive and detailed characterizations of temporal decorrelation phenomena has emerged, especially for the future spaceborne operations. However, investigation has not been covered by ESA campaigns [4] of height-varying characteristics of decorrelation processes acting at the short-term (fractions of second) scale, for the common case of volumetric scatterers complexly moving in windblown forests.

In this work, a methodology is reported for new analyses of 4D Differential Tomography [5] type of forest temporal decorrelation phenomena, exploiting a ground-based miniradar array with very quick acquisition capabilities. Moreover, corresponding recent real data results are presented, developing characterizations of both height- and time-varying behaviours of the short-term decorrelation in a representative experiment for a stand of trees in Italy (PisaScat experiment), in two different wind conditions and seasons.

Consequently, indications are obtained that short-term decorrelation processes can affect also advanced spaceborne Tomo-SAR systems based on tandem (i.e. formation-flying) configurations [6], depending on the satellite time-lag, and their related products.

This unprecedented characterization concept and the new findings can be useful for current Tomo-SAR and also Pol-InSAR analyses, and most importantly, for development of the advanced mission concepts and programs of SAOCOM-CS-like kind [6], including LuTan-1 [7].

[1] M. Pardini, K. Papathanassiou, “On the Estimation of Ground and Volume Polarimetric Covariances in Forest Scenarios with SAR Tomography,” IEEE GRSL, 14 (10), pp.1860-1864, 2017.

[2] Y. Huang, L. Ferro-Famil, A. Reigber, “Under-foliage Object Imaging using SAR Tomography and Polarimetric Spectral Estimators,” IEEE TGARS, 50 (6), pp.2213-2225, 2012.

[3] X. Yang, M. Liao, L. Zhang, S. Tebaldini, “Forest Height Retrieval in Tropical Areas using P-band Multibaseline SAR Data,” Proc. 6th Asia-Pacific Conference on Synthetic Aperture Radar (APSAR), 2019.

[4] T. Dinh Ho Minh, et al., “Vertical Structure of P-Band Temporal Decorrelation at the Paracou Forest: Results from TropiScat,” IEEE GRSL, 11 (8), pp.1438-1442, 2014.

[5] F. Lombardini, “Differential Tomography: a New Framework for SAR Interferometry,” IEEE TGARS, 43 (1), pp.37-44, 2005.

[6] K. Scipal, M. Davidson, “The SAOCOM-CS Mission: First Bistatic and Tomographic L-band Mission,” Proc. IEEE IGARSS, 2017.

[7] D. Liang, et al., “A High-accuracy Synchronization Phase-compensation Method based on Kalman Filter for Bistatic Synthetic Aperture Radar,” IEEE GRSL, Early Access, 2019.

Lombardini-Experimental Analyses of Forest Short-Term Decorrelation-116Poster4_Cn_version.pdf


Poster
ID: 136 / Dr4 YSPS.1.1: 10
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32278 - Three- and Four-Dimensional Topographic Measurement and Validation

Identification And Monitoring Of Landslides In Mountainous Areas With Time-series InSAR: Analysis Of Landslide Detection Failure In Jichangzheng, Guizhou, China

Yian Wang1, Jie Dong1, Jianya Gong1, Mingsheng Liao2, Lu Zhang2

1School of Remote Sensing and Information Engineering, Wuhan University, Wuhan 430079 China; 2State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan 430079 China

Landslides are a major cause of damages or losses of property and life around the world. The detection and mapping of active slopes is a critical task for landslide disaster prevention and early warnings development. SAR Interferometry (InSAR) has been proven to be effective for landslides deformation measurement. However there are blind areas, at where the landslides cannot be detected by InSAR. These areas are generally caused by geometric distortion and vegetation decorrelation. In engineering applications, identification of blind areas can not only provide a reference for the selection of SAR data, but also provide guidance for other technical tools such as field geological surveys to improve the identification of potential landslides.

This study divides the wide-area InSAR landslide detection into two parts: Prior identification of undetectable areas and early identification of landslide. First,we use DEM data, landcover map, and SAR acquisition parameters (including satellite heading angle and radar incidence angle) to conduct visibility estimation, sensitivity estimation, and InSAR applicability estimation, then forming a comprehensive evaluation index. The visibility estimation is used to identify layover and shadow areas caused by SAR observation geometric distortion. The sensitivity estimation is used to identify areas that are not sensitive to landslide deformation detection. The applicability estimation is used to identify low-coherence areas due to vegetation coverage. Their comprehensive evaluation indicators are provided to provide the final applicability map of landslide detection. Then, time series InSAR is used to detect the wide-area landslides using the StaMPS/SBAS tool.

A huge landslide occurred on 23rd July, 2019 in Shuicheng County, Guizhou Province, China, causing huge damage. Taking Shuicheng County as an example (Figure 1), this study focuses on blind areas of landslide detection and early identification of landslides. This place is in the area of high mountains and canyons, with elevation ranging from 700 to 3000 meters above sea level. The landform landscape is dominated by mountains and hills, and there are landforms such as mountain plains, plateaus, and terraces. And the central Shuicheng County is violently eroded by the severe cutting and erosion of the Beipan River, hence the geometric distortion is very serious. The L-band ALOS-2 PALSAR-2 and C-band Sentinel-1 datasets were used. Among them, the ALOS-2 PALSAR-2 data set is in FBD mode, with a total of 16 scenes; the Sentinel-1 data set is in IW wide mode, with 67 ascending scenes and 69 descending scenes, respectively.

The result blind area detection is shown Figure 2. From the visibility of landslide detection (Figure 2(a)), the shadow area is distributed on both banks of the river valley and the edge area of the elevated terrain. Most of the shadow areas of the ascending orbit overlap with the layover areas of the descending orbit. Therefore, some areas are still undetectable even combining both ascending and descending orbits, which needs additional technical means for supplementary investigation. From the sensitivity of landslide detection (Figure 2(b)), the sensitivity to the north-south slope is the lowest, and the east-west slope is highly sensitive. Therefore, special attention should be paid to landslides with low sensitivity. Judging from the applicability of InSAR (Figure 2(c)), , the applicability is poor in most areas due to dense forest cover, which needs long-wavelength SAR data to obtain high coherence.

We detected six active landslides from the deformation rate maps (Figure 3), covering more than 500 square kilometers, which were interactively verified by the three SAR datasets. Most of the landslides are distributed on the edge of the high-level terrain, presenting huge threat to the local residents at the valleys. There are two landslide areas caused by mining deformation (Figure 4). Continuous monitoring of the safety of buildings around the mine is required, although the danger is relatively small.

It should be pointed out that the Jichangzhen Landslide was not identified from the wide-area detection result. The Jichangzhen landslide is located four kilometers west of the Beipanjiang River, on the southern slope of Jichang Town. The landslide descended from south to north, destroying the buildings that on the slope and foothills, causing huge casualties. From the time series deformation of point P3 (Figure 5), no obvious deformation were found. However, there are landslides called Fanazu and Xujiaying landslides that have been detected on the opposite mountain, whose deformation degree exceeds 60mm/y. The time series deformation of points P1 and P2 shows seasonal pattern. The deformation in winter is small, and the deformation in summer is large. Considering that the geological conditions here as same as those of the two nearby landslides, we speculate that the landslide may be a sudden landslide caused by rainfall. Therefore, the rainfall threshold method should be adopted in the region to carry out meteorological and geological disaster monitoring and early warning.

Wang-Identification And Monitoring Of Landslides In Mountainous Areas With Time-series InSAR-136Poster4_Cn_version.pdf
Wang-Identification And Monitoring Of Landslides In Mountainous Areas With Time-series InSAR-136Poster4_ppt_present.pdf


Poster
ID: 114 / Dr4 YSPS.1.1: 11
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32278 - Three- and Four-Dimensional Topographic Measurement and Validation

Pre- and Post- Failure Landslide Analysis Using Both Satellite and Ground Based InSAR: A Case Study of the Xinmo Landslide, China

Jie Dong, Mingsheng Liao, Lu Zhang

Wuhan University, China, People's Republic of

Landslides are a major threat in all mountainous regions throughout the world, causing huge losses of life and property every year. The measurement of landslide surface deformation can facilitate prevention and mitigation of landslide disasters. The potential landslides can be detected through capturing the pre-failure deformation. The short-term emergency monitoring can be carried out to ensure the rescue security after the landslide collapse using ground based InSAR. The satellite InSAR is more suitable for long-term post-failure landslide risk assessment.

This study takes the Xinmo landslide as an example to demonstrate the pre- and post- failure landslide analysis using both satellite and ground based InSAR. The Xinmo landslide happened in the early morning of 24 June 2017 at about 5:38 am local time, and this catastrophic event caused enormous casualties in Xinmo Village, Mao County, Sichuan Province in China.

We use the Sentinel-1 data to capture the pre-failure movement. Both the ascending and descending Sentinel-1 were processed using StaMPS/SBAS. The sliding source area can be identified from their deformation rate map. The accelerated movement of the source area just before the collapse was measured by both the ascending and descending Sentinel-1 data.

The IBIS FL system was used to assess the post-failure stability of the Xinmo landslide, starting at 20:45:41 in 29 June and ending at 08:52:10 in 05 July. We obtained the averaged linear deformation rate from the 927 scenes for the Xinmo landslide. The averaged linear deformation rate map presents two unstable areas moving toward the GBSAR instrument. One is the debris mass on the west flank of the landslide. The whole east side moved with maximum linear deformation rate larger than 40 mm/d. Another is located at the deposit area. The spatial pattern is slender along the elevation direction, indicating the broken rocks slipping along the slope.

The post-failure ascending and descending Sentinel-1 datasets acquired from June 2017 to December 2019 were processed using StaMPS/SBAS method. The ascending and descending orbits present similar deformation distribution. The north, south, and east sides of the debris mass on the west flank are unstable after the landsldie failure as indicated by the Sentinel-1 results. The maximum LOS deformation rate reached -80 mm/yr. In addition, a large number of rocks and gravels loosely stacked at the bottom of the landslide, i.e. the deposit area. These loose deposits are compacted under the force of gravety. The compaction process behaved as subsidence, which can be captured by the Sentinel-1 satellites. The Sentinel-1 results reveal that the subsidence mainly happenedd in the east side of the deposit area.

Dong-Pre- and Post- Failure Landslide Analysis Using Both Satellite and Ground Based InSAR-114Poster4_Cn_version.pdf


Poster
ID: 115 / Dr4 YSPS.1.1: 12
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32278 - Three- and Four-Dimensional Topographic Measurement and Validation

Monitoring Large-scale Linear Hydraulic Engineering Using Time Series Sentinel-1 Dataset——A Case Study Of The Middle Route Of China’s South-to-North Water Diversion Project

Nan Wang1, Jie Dong2, Mingsheng Liao1, Lu Zhang1

1State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, China, People's Republic of; 2School of Remote Sensing and Information Engineering, Wuhan University, China, People's Republic of

Large-scale man-made linear hydraulic engineering is a powerful way to improve the ability of water resources allocation and water supply guarantee. It has the features of long line, wide areas, complex engineering layout and many types of functional buildings. The South-to-North Water Diversion (SNWD) Project is a great infrastructure of China to alleviate the serious water shortage in North China and optimize the water supply pattern. It consists of three parts of channels: the Eastern Route Project, the Middle Route Project and the Western Route Project. The total length is 3797 km, involving 15 provinces and 500 million residents. To guarantee the secure operation, it is essential to monitor the geo-stability of such large-scale linear hydraulic engineering. However, traditional ground-based techniques are usually limited by the distribution density of sensors and relocation difficulty of monitoring instruments. Large-scale monitoring of channels and buildings also requires huge monitoring funds.

The Synthetic Aperture Radar Interferometry (InSAR) has been considered as an effective tool for detecting long-term deformation and identifying possible safety problems in civil engineering. The satellite InSAR has the advantages of large-scale coverage, high-precision deformation measurement with low cost. High-frequency coverage of wide SAR images makes this InSAR more suitable for the deformation monitoring of the large-scale infrastructures, such as the SNWD Project.

In this study, a long-term time-series Sentinel-1 IW dataset, including total five frames of Path 11, Path 113 and Path 40, was processed by Persistent Scatters InSAR (PS-InSAR) to monitor the dike of the Middle Route of SNWD Project, as shown in Figure 1. The unstable channel sections were detected and some key sections were analyzed in details.

We obtained the distribution map of deformation rate of the channel in the Henan Province with a length of 730 km, as shown in Figure 2. This result indicates that the dike is generally stable, except for partial canal sections. Some deformation of channel sections is caused by the surrounding ground subsidence, while others are deformation of the channel slope itself.

The Yuzhou-Changge channel section, according to the deformation rate distribution derived by PS-InSAR, crosses through a subsidence region, and the settlement canal is approximately 2.5 km long, as shown in Figure 3. Its maximum deformation velocity is near -20 mm/yr and the profile of the deformation rate along the channel line presents a very uneven deformation of the channel slope. The result is verified by in-situ leveling measurements and they agree well with each other.

The section of the channel in Zhengzhou area also present complex deformation pattern. This channel section passes through deformation areas with uplift and subsidence appearing alternatively. The InSAR deformation time series is consistent with the leveling measurements. The relationship between the special deformation characteristics and the complex distribution of geological faults was discussed.

We carried out an analysis of deformation distribution characteristics of Shahe Aqueduct, one of the most technically complex control engineering in the SNWD Project. The InSAR result reveals that this engineering is relatively stable, except for two design sections. For one of them, the deformation rate of its main body is smaller than that at its entrance. This is related to the engineering features of its lower supporting structure and geological conditions. The other one, the left side of which is excavated from the slope while the right side of which is high fill, is undergoing obvious deformation.

The time-series InSAR technique with high efficiency, high precision makes it a powerful tool for long-term safety monitoring of the SNWD project. It can greatly reduce the monitoring cost for the SNWD Project. It can not only measure the deformation of the channel slope itself, but also detect the stability of the surrounding area of the channel slope. This is more conductive to identify the root causes of deformation and provide guidance for subsequent channel safety maintenance. The InSAR technique can be extended to other routes of the SNWD Project or other water conservancy projects.

Wang-Monitoring Large-scale Linear Hydraulic Engineering Using Time Series Sentinel-1 Dataset——A Case Stu_Cn_version.pdf
Wang-Monitoring Large-scale Linear Hydraulic Engineering Using Time Series Sentinel-1 Dataset——A Case Stu_ppt_present.pdf


Poster
ID: 127 / Dr4 YSPS.1.1: 13
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32278 - Three- and Four-Dimensional Topographic Measurement and Validation

Fault structure and cause analysis of the 2019 Ms6.0 Changning Earthquake in Sichuan, China based on InSAR

Hua Gao1, Mingsheng Liao1, Wenbin Xu2, Xiaoge Liu2, Nan Fang2

1Wuhan University, People's Republic of China; 2Central South University, School of Geosciences and Info-Physics, China

On June 17, 2019, an Ms6.0 earthquake occurred in Changning, Sichuan, China (Changning event), which is the largest earthquake within 50 km of the area since records. It attracts great attention as the area has the largest shale gas production and large mineral salt production in China. Based on Interferometric Synthetic Aperture Radar (InSAR), we measure the coseismic deformation and build the fault models of the Changning event and two earlier Ms>5.0 earthquakes (P1:2018/12/16 Ms5.7 and P2:2019/1/3 Ms5.3) using Sentinel-1 and ALOS2 satellite data. The surface deformation caused by the Changning event is mainly uplift with a maximum of 17.2 cm (towards the satellite). Because of the significant non-Double-Couple character of the earthquake, we obtain a double-fault model (FMB) for the event. The final model shows that the Changning event was caused by a small fault (FMB2) and a big fault (FMB1) with a left-lateral strike and thrust slip. The strike of the main fault is 128° with a dip angle of 46°. The total seismic moment obtained by inversion is 6.68×1017 Nm, corresponding to Mw 5.85. The model is roughly consistent with the double slip model provided by seismology. This provides the geodetic evidence for the double slip of the Changning event. Based on the fault model, we analyze the cause of the Changning earthquake from the local tectonic setting, Coulomb stress change, mining, and fluid injection. The results show that the Changning earthquake is likely to be affected by external stimulation. However, the Changning earthquake does not show the characteristics induced by hydraulic fracturing. The stress change on the main fault after the two earlier Ms>5.0 earthquakes is main positive, with a maximum of 0.09 MPa and the water-flooding position of the salt mine is highly coincident with the main slip area of the fault. Therefore, there is no direct evidence showing that the Changning earthquake was related to hydraulic fracturing. We consider that the event may be related to salt mining. P1 and P2 may also play an important role in advancing the Changning earthquake. The characteristics of aftershock distribution indicate that seismic activities may be controlled by crust heterogeneity and structural complexity.

Gao-Fault structure and cause analysis of the 2019 Ms60 Changning Earthquake-127Poster4_Cn_version.pdf
Gao-Fault structure and cause analysis of the 2019 Ms60 Changning Earthquake-127Poster4_ppt_present.pdf


Poster
ID: 131 / Dr4 YSPS.1.1: 14
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32294 - Integrated Analysis of the Combined Risk of Ground Subsidence Sea Level Rise, and Natural Hazards in Coastal Delta Regions

The Weighted Adaptive Variable-lEngth (WAVE) Technique for InSAR Analysis in Mid-to-Low Coherent Areas

Francesco Falabella1,2,3, Qing Zhao4,5, Antonio Pepe2

1University of Basilicata, School of Engineering, Potenza, Italy; 2Institute for the Electromagnetic Sensing of the Environment (IREA), National Research Council (CNR), Napoli, Italy; 3Institute of Methodologies for Environmental Analysis (IMAA), National Research Council (CNR), Tito Scalo, Italy; 4Key Laboratory of Geographical Information Science, Ministry of Education, East China Normal University, Shanghai, China; 5Joint Laboratory for Environmental Remote Sensing and Data Assimilation, East China Normal University, Shanghai, China

The continuous growing up of Multi-Temporal InSAR (MT-InSAR) methods [1]-[3] have shifted up the reliability and affordability of these techniques. In this context, the new achievable milestones are represented by the challenging tasks of design and tests advanced MT-InSAR for improving the previous techniques, and also for correcting some of the canonical problems that have arisen in the last decades through the well-known interferometric approaches.

The methodology proposed in this abstract is naturally well-posed on the context of the MT-InSAR approaches, and in a specific way, it is designed to correctly work on decorrelated areas, such as the Basilicata region (Italy) and Shanghai bay area (China), which are the two test sites where we have applied the developed framework. Briefly, the test sites are known as problematic and instabilities zones where to perform InSAR analyses, aimed at computing the so-called displacement ground time-series of the investigated targets. The main issues over the aforementioned test sites can be reconducted to the losses of spatial coherence between consecutive SAR acquisitions: These effects are well-known in literature as decorrelation phenomena [4].

The proposed work is based on the use of weighted Least-squares (WLS) approaches for the generation of ground line-of-sight (LOS) displacement time-series through differential interferometric SAR methods. More precisely, in this paper, a WLS method that extends the usability of the Multi-Temporal InSAR (MT-InSAR) Small Baseline Subset (SBAS) algorithm [5] in regions with medium-to-low coherence is presented. The proposed method relies on the adaptive selection and exploitation, pixel-by-pixel, of the medium-to-high coherent interferograms, such as to discard the noisy phase measurements. In such a way, for each pixel, it is possible to obtain several disjoined sets of interferograms, which are then connected by exploiting the weighted singular value decomposition (WSVD) method [6]. As a consequence, the interferogram networks reduction may lead to rejecting some SAR acquisitions from the used dataset, this results in the generation of so-called variable-length displacement time-series. The core of the approach resides in the innovative interferograms inversion step, through the Weighted-SVD approach, which permits us to emphasize the more reliable phase measurements by constraining them with the weights computed as the reciprocal of the phase variance. In a specific way, the strategy adopted for weighting each pixel of every InSAR pairs is straightforward obtained by exploiting the basic principles of the directional statistic [7], in this manner it is possible to compute the variance values, avoiding the computational burden of the standard approach. The solution is now pixel-dependent, because both the selected InSAR data pairs and the associated weights are different from pixel to pixel. In critical regions, it may also happen that the pre-selection of the “good” interferograms, for the given SAR pixel, leads some SAR acquisitions being discarded. In this latter case, the ground displacement time-series can also still calculate but with a reduced length that preserve the reliability of the results, with a significant increase in correctly investigated pixels, at the expense of a less dense temporal sampling.

The experimental results have been performed considering by applying the Weighted Adaptive Variable-lEngth (WAVE) technique [8] to two different SAR datasets collected by the Italian Space Agency Cosmo-SkyMed (CSK) constellation sensors and the Sentinels platform over the Basilicata region (Italy) and the Shanghai bay area (China), respectively. The preliminarily results will be presented and discussed at the next Dragon-IV meeting.

References:

[1] Ferretti, A.; Fumagalli, A.; Novali, F.; Prati, C.; Rocca, V.; Rucci, A. A New Algorithm for Processing Interferometric Data-Stacks: SqueeSAR. IEEE Trans. Geosci. Remote Sens. 2001, 49, 3460–3470.

[2] Fornaro, G.; Verde, S.; Reale, D.; Pauciullo, A. CAESAR: An approach based on covariance matrix decomposition to improve multibaseline multitemporal interferometric SAR processing. IEEE Trans. Geosc. Remote Sens. 2015, 4, 2050–2065.

[3] Pepe, A.; Yang, Y.; Manzo, M.; Lanari, R. Improved EMCF-SBAS Processing Chain Based on Advanced Techniques for the Noise-Filtering and Selection of Small Baseline Multi-look DInSAR Interferograms. IEEE Trans. Geosci. Remote Sens. 2015, 53, 4394–4417.

[4] Zebker, H.A.; Villasenor, J. Decorrelation in interferometric radar echoes. IEEE Trans. Geosci. Remote Sens. 1992, 30, 950–959.

[5] Berardino, P.; Fornaro, G.; Lanari, R.; Sansosti, E. A new algorithm for surface deformation monitoring based on small baseline differential SAR interferograms. IEEE Trans. Geosci. Remote Sens. 2002, 40, 2375–2383.

[6] Van Loan, C. F. Generalizing the singular value decomposition. SIAM J. NUMER. ANAL. 1976, 13, 1.

[7] Mardia, K.V.; Jupp, P.E. Directional Statistics; Wiley: New York, NY, USA, 2000.

[8] Falabella, F.; Serio, C.; Zeni, G.; Pepe, A. On the Use of Weighted Least-Squares Approaches for Differential Interferometric SAR Analyses: The Weighted Adaptive Variable-lEngth (WAVE) Technique. Sensors2020, 20, 1103; doi:10.3390/s20041103

Falabella-The Weighted Adaptive Variable-lEngth-131Poster4_Cn_version.pdf
Falabella-The Weighted Adaptive Variable-lEngth-131Poster4_ppt_present.pdf


Poster
ID: 145 / Dr4 YSPS.1.1: 15
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32294 - Integrated Analysis of the Combined Risk of Ground Subsidence Sea Level Rise, and Natural Hazards in Coastal Delta Regions

Optimization of the Combined C-/X- Band Time-Overlapped Ground Deformation Time-Series Derived by SBAS-DInSAR and SVD method

Jingzhao Ding1,2,3, Qing Zhao1,2,3, Maochuan Tang1,2,3, Qiang Wang1,2,3

1Key Laboratory of Geographical Information Science, Ministry of Education, East China Normal University, Shanghai 200062, China; 2Chongming ECO Institute, East China Normal University, Shanghai 200241, China; 3School of Geographic Sciences, East China Normal University, Shanghai 200241, China

Spaceborne Multi-temporal Synthetic Aperture Radar Interferometry (MT-InSAR) is an advanced technology which is capable of obtaining line of sight (LOS) ground deformation measurements [1, 2]. In order to obtain long-term deformation time-series, data merging methods have been proposed to combine deformation time-series which are independently retrieved by different SAR satellite datasets [3, 4]. Singular value decomposition (SVD) method has been efficiently used for combing two time-overlapped ground deformation time-series [2]. SVD can solve the rank-defect linear solution problem in the combination of two time-overlapped deformation time-series [4]. However, the optimal number of SAR observations during the time-overlapped period for combing two deformation time-series with SVD is still unknown. It is necessary to be investigated.

In this study, two time-overlapped SAR datasets covering Shanghai were used. The first dataset consists of 61 images, which were collected by COSMO-SkyMed (CSK) sensor operating at X-band (Descending, HH polarization) from December 7, 2013 to March 18, 2016. The second dataset consists of 47 images, which were collected by Sentinel-1A(S1A) sensor operating at C-band (Ascending, VV polarization) from February 26, 2015 to January 12, 2019. There are 23 CSK images and 13 S1A images in the time-overlapped period from February 26, 2015 to March 18, 2016. We separately caculated the CSK and S1A LOS deformation time-series through Small BAseline Subset (SBAS) [2]. The CSK and S1A LOS deformation time-series were converted to vertical direction with the satellite incidence angles [5, 6]. Then, we removed the components of the CSK vertical deformation time-series in N1 (1,2…,22) times during the time-overlapped period. Correspondingly, we removed the last N1 components in the N1-th removal operation. Thus, we acquired 22 groups of new CSK deformation time-series. Furthermore, the 22 groups of new CSK time-series were combined with the initial S1A time-series by using SVD method respectively. we obtained 22 groups of CSK+S1A deformation time-series. Similarly, we removed the components of the S1A time-series by N2 (1,2…,12) times, and removed the first N2 components in the N2-th removal operation. We obtained 12 groups of new S1A time-series. After the combination with initial CSK time-series, we obtained another 12 groups of CSK+S1A deformation time-series. Finally, the accuracy of the 34 groups of CSK+S1A time-series were evaluated by using the ground leveling measurement data.

We compared the accuracy of the 34 groups of combined CSK+S1A ground deformation time-series to investigate the optimal number of SAR observations during the time-overlapped period. The results indicate that if the number of overlapped SAR observations is less than 5, the accuracy of combined time-series is dramatically decrease. The accuracy of time-series combined with more than 5 SAR observations in the time-overlapped period is similar with the one obtained with only 5 SAR observations. It suggests that when SVD is used for combing two time-overlapped deformation time-series, the optimal number of SAR observations during the time-overlapped period is approximately 5.

Ding-Optimization of the Combined C-X- Band Time-Overlapped Ground Deformation Time-Series Derived-145Poster4_Cn_version.pdf
Ding-Optimization of the Combined C-X- Band Time-Overlapped Ground Deformation Time-Series Derived-145Poster4_ppt_present.pdf


Poster
ID: 286 / Dr4 YSPS.1.1: 16
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32365 - Landslide Identification, Movement Monitoring And Risk Assessment Using Advanced Earth Observation Techniques

Unbalanced Technics to Improve the Train for ML Models to Detect Earthquake Fringes

Bruno Silva1, Joaquim J. Sousa2,3, Milan Lazecky4, António Cunha2,3

1Faculdade de Ciências da Universidade do Porto; 2Engineering Department, School of Science and Technology, University of Trás-os-Montes e Alto Douro; 3INESC Technology and Science, Porto, Portugal; 4COMET, School of Earth and Environment, University of Leeds, Leeds LS2 9JT, UK

There has been an increase in space-borne sensors for Earth observation in recent years, e.g., the Synthetic Aperture Radar (SAR). These sensors can obtain many images with different resolutions for the entire planet, even for the most remote areas. One of the applications is studying terrain deformations using Interferometric Synthetic Aperture Radar (InSAR) techniques. In 1992, the first demonstration of the InSAR technique, where the ERS-1 satellite generated an image of the deformation caused by the Landers earthquake. Since that time, there have been advances in this technique applied to studying all types of terrestrial deformations, with particular success in studying earthquakes and volcanoes. The success of InSAR has led to the interest of space agencies that have started to create SAR-only missions and make available an exponential increase in the SAR data, which become impossible to analyze manually. Machine Learning (ML) can automatically process large datasets in the most varied areas, including remote sensing data, and it has become an opportunity for earth observation. Recent studies have demonstrated the ML's ability to detect visible fringes in InSAR images caused by deformations such as earthquakes deformations. However, InSAR data is frequently unbalanced - deformations are sparse compared to those that do not have deformation, and it needs special attention for training ML models. There are several techniques to approach data unbalancing, such as synthetic data and focal loss. In this work, we created an earthquake dataset from the LICS database with 3100 images and are exploring unbalanced technics to improve the train for ML models to detect earthquake fringes.

Silva-Unbalanced Technics to Improve the Train for ML Models to Detect Earthquake Fringes-286Poster4_ppt_present.pdf


Poster
ID: 287 / Dr4 YSPS.1.1: 17
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32365 - Landslide Identification, Movement Monitoring And Risk Assessment Using Advanced Earth Observation Techniques

ML Segmentation Models to Automatically Identify Areas Affected by Earthquakes

Bruno Silva1, Joaquim J. Sousa2,3, Milan Lazecky2,3, António Cunha4

1Faculdade de Ciências da Universidade do Porto, Portugal; 2Engineering Department, School of Science and Technology, University of Trás-os-Montes e Alto Douro; 3INESC Technology and Science, Porto, Portugal; 4COMET, School of Earth and Environment, University of Leeds, Leeds LS2 9JT, UK

In the 20th century, scientists discovered that earthquakes occur due to the release of energy that was accumulated in tectonic faults. These natural phenomena occur with different intensities and scales. They can be felt from a few meters to kilometers from their epicenter depending on their magnitude and depth and cause significant damage and fatalities. Knowledge of the affected area is essential to avoid risks after the event, such as the collapse of buildings in short/medium term after the event. Since 1992, with the development of Interferometric Synthetic Aperture Radar (InSAR) techniques, it is possible to generate images of the deformations and visualize areas on the globe that have been deformed. With this great success, European Space Agency (ESA) developed Sentinel-1 with C-band and provided free access to SAR data bulks. The Centre for Observation and Modelling of Earthquakes, Volcanoes & Tectonics (COMET) make InSAR calculations and make them free available (https://comet.nerc.ac.uk/comet-lics-portal/). As this amount of data has become impossible to process manually and Machine Learning (ML) start to be used to process these data automatically. Several studies have been applying ML's ability to detect InSAR images with the fringes in InSAR images; however, no studies have been found where the area is isolated using segmentation techniques. In this work, we apply ML segmentation models to automatically identify areas affected by earthquakes in interferograms.

Silva-ML Segmentation Models to Automatically Identify Areas Affected-287Poster4_ppt_present.pdf


Poster
ID: 163 / Dr4 YSPS.1.1: 18
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32365 - Landslide Identification, Movement Monitoring And Risk Assessment Using Advanced Earth Observation Techniques

Recent Activity of Changbaishan Tianchi VolcanoRevealed by Time Series InSAR and Geophysical Modeling

Jiaqi Zhang1, Lianhuan Wei1, Cristiano Tolomei2, Guoming Liu3, Guido Ventura2, Elisa Trasatti2, Christian Bignami2, Stefano Salvi2, Tiejun Gao1, Francesca Romana Cinti2, Xianju Li4

1Northeastern University, China, People's Republic of; 2Istituto Nazionale di Geofisica e Vulcanologia, Italy; 3Changbaishan Volcano Observatory, China, People's Republic of; 4China University of Geosciences, China, People's Republic of

Changbaishan Tianchi volcano is located at the border of China and North Korea, which is the most complete Cenozoic polygenetic composite volcano preserved in China, and also the most active volcano with eruption potential in China. In history, the volcano has experienced several major eruptions, amongst which the Millennium eruption about 1000 years ago is one of the largest eruptions in the world during the past 2000 years. During the period from 2002 to 2005, the frequency and magnitude of seismicity in Tianchi volcano area increased significantly, and the gas geochemistry at several hot springs also changed significantly, indicating the volcanic activity entered an active period. After the active period, volcanic activity has returned to previous level. However, a volcanic swarm suddenly appeared on December 22, 2020, with 38 volcanic seismicity events of various types occurred. On March 5, 2021, another earthquake with magnitude of ML3.1 occurred, which is the largest VT (Volcanic-tectonic) type earthquake event after active volcanic disturbance period. These phenomena show that the volcanic seismic activity after December 2020 is beyond the background level, and monitoring of Tianchi volcano should be conducted continuously.
Traditional surface deformation monitoring methods, such as leveling and GPS observation, are limited by shortcomings of sparse space points and low accuracy, which are not able to reveal the spatial distribution of deformation information over a large area. On the other hand, Interferometric Synthetic Aperture Radar (InSAR) technology makes up for the shortcomings. Advanced time-series InSAR methods are able to overcome the influence of orbital errors, atmospheric artifacts, topographic errors and other errors in interferometric phase by analyzing long time series SAR data, and obtain large-scale and high-precision deformation monitoring results. Among the commonly used time-series InSAR methods, the Small Baseline Subset time-series InSAR (SBAS-InSAR) can effectively reduce the influence of temporal and spatial decorrelation due to its high image utilization, high spatial density and short baselines. It is more suitable for deformation monitoring of Tianchi volcano area, which long-time snow coverage and vegetation.
In this study, 19 ALOS-2 images from November 2018 to October 2020 were processed to estimate the surface deformation of Tianchi volcano area. Due to the large topographic inequality in the volcanic area, obvious vertical stratified atmospheric phase and topographic residual are detected and removed from the interferometric phase. The results show that the ground surface of Tianchi volcano is uplifting slightly during this period, and the closer to the crater, the more obvious the uplift. Geophysical modeling based on Mogi point source was also conducted using the SBAS-InSAR results, indicating a point source at the depth of approximately 3km. The modeled depth is in agreement with the depth of seismic events, which is possibly where hydrothermal activity is happening in the shallow magma chamber. Generally, this study provides data support for the monitoring of volcanic activity and future disaster assessment in Changbaishan Tianchi volcano, and verifies the feasibility of time series InSAR and geophysical modeling in applications of active volcanoes.

Zhang-Recent Activity of Changbaishan Tianchi VolcanoRevealed-163Poster4_Cn_version.pdf
Zhang-Recent Activity of Changbaishan Tianchi VolcanoRevealed-163Poster4_ppt_present.pdf


Poster
ID: 242 / Dr4 YSPS.1.1: 21
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32365 - Landslide Identification, Movement Monitoring And Risk Assessment Using Advanced Earth Observation Techniques

Collaborative Monitoring of Slope Displacements in Open-pit Mines with LiDAR DEM and Sentinel-1 Data

Fang Wang1, Lianhuan Wei1, Cristiano Tolomei2, Christian Bignami2, Yachun Mao1, Shanjun Liu1, Qiuyue Feng1

1Northeastern University, China, People's Republic of; 2Istituto Nazionale di Geofisica e Vulcanologia, Rome, Italy

Surface displacement monitoring of open-pit mines is of vital importance for the safety of field operators and mine production. With the Development of Synthetic Aperture Radar (SAR) remote sensing technology, Time series Interferometric SAR (TS-InSAR) has been widely used in wide-area displacement monitoring in recent decades. However, limited by the side-looking geometry, the estimated displacements in TS-InSAR are only in the satellite’s line-of-sight (LOS) direction, which are completely different from real displacements in areas with large topographic inequality, since displacements may occur in the three dimensional space in such areas. In translational landslide monitoring, an assumption that displacements generally happen parallel to the largest slope gradient is made. In order to resolve slope displacements of landslides, an accurate digital elevation model (DEM) aided slope displacement inversion method is proposed. The accurate DEM is generated by Light Detection and Ranging (LiDAR) scanning, used to minimize the topographic residual TS-InSAR analysis, and then in inversion of slope displacements from those in LOS.

In this paper, three stacks of Setinel-1 images (186 scenes) acquired from both ascending and descending orbits are used for SBAS analysis over Qidashan and Anqian open-pit mines, with temporal coverage from December 2016 to May 2019. In the SBAS processing, LiDAR DEM of the mining pits and TanDEM-X DEM with 3 arc second spatial resolution are used to remove the topographic phase. Accurate slope angles and aspects derived from the LiDAR DEM are used to estimate the slope displacements. In order to ensure high temporal sampling rate and high point density, a multi-master interferometry mode is adopted in the small baseline subsets (SBAS) method, with reduced spatio-temporal decorrelation problems. In SBAS, firstly, all the slave images are registered with the super master image, and small baseline differential interferograms are generated. Then, a minimum cost flow algorithm is used to unwrap the differential interferograms. After that, singular value decomposition method is adopted to combine the unwrapped differential interferograms and generate a time series which includes atmosphere, residual terrain and deformation signal. After that, the residual topography and atmosphere signals are eliminated by a second-order unwrapping and filtering, and finally the deformation rates and the cumulative deformation are retrieved. With the assistance of high-resolution LiDAR DEM, the deformation parameters in LOS are converted to slope direction using the radar incidence angle, heading angle, azimuth angle, slope aspects and angles.

The derived results are highly consistent with on-site GPS measurements and precipitation data. Based on the analysis of local precipitation changes, it is found that there is a correlation between deformation and precipitation. The results show that the stability of open-pit mines is mainly affected by rock mass structure, lithology and precipitation. SBAS method can be used as a routine tool to monitor the stability of open-pit mines, and provide technical support for disaster prevention and safe production.

Wang-Collaborative Monitoring of Slope Displacements in Open-pit Mines with LiDAR DEM and Sentinel-1_Cn_version.pdf
Wang-Collaborative Monitoring of Slope Displacements in Open-pit Mines with LiDAR DEM and Sentinel-1_ppt_present.pdf


Poster
ID: 343 / Dr4 YSPS.1.1: 22
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32365 - Landslide Identification, Movement Monitoring And Risk Assessment Using Advanced Earth Observation Techniques

Remote Sensing Observations for Landslide Identification in South Tyrol, Italy and the Longnan Region, China

Peter Mayrhofer1, Ruth Sonnenschein2, Clement Atzberger1, Giovanni Cuozzo2, Stefan Steger2

1University of Natural Resources and Life Sciences Vienna (BOKU), Austria; 2Eurac Research, Italy

Landslide inventory mapping is an essential asset for hazard assessment and mitigation. Despite significant progress in the development of automated image processing chains for landslide inventory mapping, tedious manual interpretation of aerial and satellite images remains the de facto standard (European Centre on Geomorphological and Seismological Hazards, 2017). Optical remote sensing is until today not used as an operational tool in contrast to SAR interferometry and LiDAR. The reasons are a lack of adapted image processing techniques that address the specific information needs of landslide investigations while remaining sufficiently generic to a broad range of different landslide types and environmental settings. This study investigates in automated change-detection workflows using annual Sentinel-2 (S2) composites and S2 multi-temporal imagery. Landslide areas in the time period 2015-2019 were analyzed based on already-known landslide location points, downslope-oriented moving windows and supervised classifications of change-vector-intensity and -angle using Receiver Operating Characteristic (ROC) curves. Subsequently, time-series analysis was applied on the resulting change-pixels to derive temporal breakpoints (i.e. the timing of the landslide occurrence). Our findings highlight that out of 65 reported landslide locations in South Tyrol, only 9 (13.8%) are recognizable by means of S2 imagery. Large landslides, however, were detectable both spatially and temporally by means of the multi-temporal change-detection approach. By applying a quantitative accuracy assessment for the independent test site in Longnan, China, our results show that the approach is highly transferable with minimal adjustments and is suitable for efficient spatial-temporal landslide mapping across large areas.

Mayrhofer-Remote Sensing Observations for Landslide Identification-343Poster4_ppt_present.pdf


Poster
ID: 267 / Dr4 YSPS.1.1: 23
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32431 - Seismic Activity Monitoring and Lithosphere Deformation Detection by Radar Interferometry in China and Surrounding Regions

Tectonic Studies At Continental Scale From FLATSIM Automated Time Series Analysis Of Sentinel-1 InSAR Data: Case Study Of The Eastern Tibetan Plateau.

Laëtitia Lemrabet1, Cécile Lasserre1, Marie-Pierre Doin2, Marianne Métois1, Anne Replumaz2, Philippe-Hervé Leloup1, Jianbao Sun3, Marie-Luce Chevalier4

1Université de Lyon, UCBL, ENSL, CNRS, LGL-TPE, 69622 Villeurbanne, France; 2Université Grenoble-Alpes, CNRS, ISTerre, Grenoble, France; 3Institute of Geology, China Earthquake Administration, Beijing, China; 4Key Laboratory of Continental Dynamics, Institute of Geology, Chinese Academy of Geological Sciences, 26 Baiwanzhuang Rd, Beijing 100037, China

One of the limitations in the characterization of Earth surface deformation lies in the compromise between wide spatial coverage, high spatial resolution, and high temporal resolution. Today, Sentinel-1 constellation overrides this limit by providing global and systematic coverage, opening up new perspectives for monitoring surface deformation.

We focus our study on the oriental part of the Tibetan plateau, where major strike-slip and thrust faults combine to accommodate its overall eastward extrusion.

Here, we present the first FLATSIM automated time series analysis of Sentinel-1 data, acquired over the period 2014-2020 along 1200 km-long tracks on seven ascending and seven descending orbits. FLATSIM (ForM@Ter LArge-scale multi-Temporal Sentinel-1 InterferoMetry) is an automated Sentinel-1 InSAR processing chain based on the NSBAS approach (Doin et al., 2011, Grandin, 2015), implemented at CNES high-performance computer center in Toulouse in the framework of the french Data and Services Center ForM@Ter.

Our study area covers in total 1 700 000 km2, We provide the phase evolution through time for this area as well as average velocity maps with a 160 m spatial resolution.

After time series inversion, we proceed to a source separation to identify seasonal signals and perform a referencing in ITRF2008 of the average velocity maps on all tracks in eastern Tibet with a new GPS-InSAR adjustment method using a minimum number of parameters. These referenced InSAR data are then decomposed into horizontal and vertical motion contributions and inverted with the latest published GPS velocity field using the T-DEFNODE elastic block model. This allows to discuss strain localization and rates at a regional scale in the light of the tectonic and geological evolution of this area.



Poster
ID: 168 / Dr4 YSPS.1.1: 24
Poster for Dragon 4
Land & Environment: 32248 - Earth Observation Based Urban Services for Smart Cities and Sustainable Urbanization

A Tool for relating Land Surface Temperature to Near-Air-Surface Air Temperature in Support of Urban Climate Studies and Smart Urbanization

Kostas Philippopoulos, Constantinos Cartalis

National and Kapodistrian University of Athens, Greece

Urbanization accelerates the deterioration of the urban thermal environment, which is characterized by increased spatial variability. Consequently, sustainable urbanization strategies require air temperature information in high-resolution for the provision of effective solutions and countermeasures to thermal stress. The existing networks of in-situ air temperature observations fail to describe effectively the thermal spatial variability and thus statistical modelling approaches based on Earth Observation (EO) data can contribute towards this end.

The proposed data-driven modelling framework/tool can be used to provide insight on the state of the thermal environment in high-resolution and consists of the following:

  1. Downscaling of medium resolution EO data.
  2. Development of a regional air temperature database.
  3. Artificial Neural Network (ANN) modelling approach.
  4. Construction of high-resolution spatio-temporal air temperature fields.

The framework is based on using the high temporal resolution thermal infrared imagery in combination with high spatial resolution data, also in the thermal infrared. The initial step is the downscaling of Land Surface Temperature (LST) to higher spatial resolution via a disaggregation method to obtain sub-daily and high spatial resolution LST information. In addition, the modelling framework supports the use of multi-source meteorological data that includes in-situ observations from weather stations and field experiments/campaigns, along with high-quality reanalysis products. The ERA5-Land dataset (produced by ECMWF as part of the Copernicus Climate Change Service), which provides hourly high-resolution climate information can be used upon validation, as an auxiliary dataset for enhancing the available observational databases with high-quality data. The use of ANNs facilitates the development of a statistical model that incorporates the non-linear interactions that formulate the relationship between EO data with the near-surface air temperature in the urban environment. The complexity of this relationship is highly dependent on the surface energy budget and requires the application of sophisticated data-mining approaches. The use of the trained ANN models results into the construction of long-term spatio-temporal air temperature fields that provide the required level of information regarding the local thermal conditions and thus can be effectively used in urban strategies for enhancing resilience to thermal risks.

Case-study results and validation, demonstrate the efficiency of the framework for providing accurate estimates that are useful for improving the understating on how LST relates with the near-surface air temperature in urban areas. The EO retrievals of LST could be used to create high-resolution air temperature estimates that are useful in urban climate science and for supporting smart urbanization plans. Furthermore, as a tool towards sustainable urbanism, the framework can be also applied even in areas with sparse weather observation networks and can provide accurate estimates of the local variation of near-surface air temperature for studying critical phenomena such the urban heat island.

Philippopoulos-A Tool for relating Land Surface Temperature to Near-Air-Surface Air Temperature-168Poster4_Cn_version.pdf


Poster
ID: 248 / Dr4 YSPS.1.1: 25
Poster for Dragon 4
Land & Environment: 32194 - Crop Mapping with combined use of European and Chinese Satellite Data

Study on the Identification of Rice Varieties with Remote Sensing Data

Yanan Hao1, Ruilian Li1, Jinlong Fan2

1China Agricultural University, China, People's Republic of; 2NSMC, China, People's Republic of

Abstract: Heilongjiang Sanjiang Plain has naturally unique advantage in development of model agriculture with abundant land resources, large connected arable fields. In recent years, the emergence of various kinds of high spatial and temporal resolution satellites data has strongly promoted the integration and combination of agricultural remote sensing, global navigation technology and Internet of things technology and then played an important role in support of crop classification, accurate agricultural production management, yield estimation and pest control. In this study, the Chuangye farm in the plain was selected as the study area. The sentinel 2 time series images during the growing season of 2020 were downloaded from the official website https://scihub.copernicus.eu. The samples were collected from Google Earth high-resolution image, query with farmers and field survey. The Random Forest algorithm was applied to implement the classification. Finally, the error matrix revealed that the overall accuracy of rice variety classification in the study reached 70%.

Key words: Rice; Crop classification; Agricultural Remote Sensing; Sentinel Satellite; Dragon Program

Hao-Study on the Identification of Rice Varieties with Remote Sensing Data-248Poster4_Cn_version.pdf
Hao-Study on the Identification of Rice Varieties with Remote Sensing Data-248Poster4_ppt_present.pdf


Poster
ID: 243 / Dr4 YSPS.1.1: 26
Poster for Dragon 4
Land & Environment: 32426 - Calibration and Data Quality Assurance for Quantitative Remote Sensing

The Feasibility Of Using Re-analysis Data As Thermal Infrared Radiometric Calibration Reference

Ya Nan Xue1,2, Ning Wang1, Lingling Ma1, Xinhong Wang1, Kun Li1

1Aerospace Information Research Institute, Chinese Academy of Sciences, China, People's Republic of; 2School of Optoelectronics, University of Chinese Academy of Sciences, China, People's Republic of

The re-analysis data can provide global gridded surface temperature, albedo, atmospheric profile and other parameters in continuous spatial and temporal dimensions. The atmospheric profile information derived from re-analysis data had been used in radiometric calibration and validation in infrared band by some researchers, together with the support of sea surface temperature (SST) measured by buoys. However, the spatial distribution of buoy data is uneven and there are many interference factors in the observation of buoy data. In order to reduce the cost and the complexity of calibration procedure, at the same time to increase the calibration frequency, it is a feasible way to use both the SST and atmospheric profile information extracted from the re-analysis data. However, one of the prerequisite is to check the accuracy of re-analyzed SST and consistency with other observations, and subsequently the reliability of the simulated top-of-atmosphere (TOA) based on the re-analysis data should also be verified. This study takes the ocean as research target to carry out the comparison and verification of SST and TOA brightness temperature from different sources, including the re-analyzed data from the European Center for Medium-Range Weather Forecast (ECMWF) ERA5, the buoys measured data, the satellite observations and related SST product. This study provides support for thermal infrared radiation calibration based on re-analysis data.

First, the comparison of ERA5 SST and ARGO buoy STT was carried out. ARGO buoy data was used in the South China Sea from 2008 to 2018. The results show that the annual maximum RMSE between ERA5 SST and ARGO SST is 0.53K, and the minimum RMSE is 0.42K. Next, comparisons between ERA5 SST and MODIS SST were carried out, with both the daily data covering the whole global area, and the annual data in the ocean area surrounding China. The results show that these data are highly consistent when the range of SST is big enough. The correlation coefficient between the two types of daily data is above 0.99, and the RMSE is 0.4K-0.65K. Finally, ERA5 SST and atmospheric profile data were used to simulate MODIS 31 band TOA brightness temperature, using MODTRAN atmospheric radiometric transfer model, and those simulations were compared with MODIS observations. The results show that the annual RMSE is within 0.7K in the marine areas surrounding China.

Xue-The Feasibility Of Using Re-analysis Data As Thermal Infrared Radiometric Calibration Reference-243Poster4_Cn_version.pdf
Xue-The Feasibility Of Using Re-analysis Data As Thermal Infrared Radiometric Calibration Reference-243Poster4_ppt_present.pdf


Poster
ID: 244 / Dr4 YSPS.1.1: 27
Poster for Dragon 4
Land & Environment: 32426 - Calibration and Data Quality Assurance for Quantitative Remote Sensing

Construction And Validation Of TOA Reflectance Reference Model For Stable Land Surface Target- Using Golmud Gobi Site As An Example

Peilan Song1,2, Lingling Ma1, Yongguang Zhao1, Ning Wang1, Yaokai Liu1, Wan Li1

1Aerospace Information Research Institute, Chinese Academy of Sciences, China, People's Republic of; 2School of Optoelectronics, University of Chinese Academy of Sciences, China, People's Republic of

Pseudo invariant calibration sites (PICSs) have the advantages of high surface reflectance, low latitude, low aerosol thickness, low cloud cover frequency and so on, so they are very suit for monitoring the stability of sensors. In recent years, the TOA reflectance variation and modeling of PICS have attracted the attention of many researchers and organizations including CEOS WGCV/IVOS. Algeria 3, Algeria 5, Libya 1, Libya 4, Mauritania 1 and Mauritania 2 were identified as pseudo invariant calibration sites during the CEOS IVOS-19 meeting in 2008. However, PICS are currently distributed in the Sahara Desert in North Africa and the Middle East. It is difficult to apply them to the Chinese land satellites, which are mostly imaged in China. Therefore, this study analyzes and evaluates the site characteristics of the high-altitude Golmud Gobi site located around the Qaidam Basin in Qinghai Province, China, and proposes a TOA reflectance modeling method for inland stable targets. The TOA reflectance model of the Golmud Gobi site was established by using the long-time TOA reflectance product of MODIS, and the applicability and error analysis of the model were carried out, including:

Ⅰ)Based on the ECMWF re-analysis database, the changes of atmospheric parameters such as water vapor content, ozone content, and aerosol optical thickness in the Qaidam Basin of Qinghai Province were analyzed. The Golmud Gobi site with the best atmospheric and surface stability conditions was then selected for the measurements of site characteristics, including directional characteristics observation with UAV, spectral observation with field spectrometer SVC, and aerosol observation with CE318, etc. Finally, the surface BRDF data of the site was obtained.

Ⅱ)The Sentinel2A/2B cloudless surface reflectance data from April to September 2020 were analyzed. The surface reflectance data of B2/B3/B4/B8 with 10m resolution in each landscape image was screened with the spatial uniformity <3% as the constraint condition. Finally, a 5km*5km Gobi site with both spatial uniformity and temporal stability better than 3% was obtained.

Ⅲ)The TOA reflectance model of Golmud Gobi land site was finally established by analyzing the regularity between the MODIS TOA reflectance time-series data from 2010 to 2019 and SZA/VZA/RAA/DOY. When VZA is less than 35 degrees and VZA minus SZA is less than ±30 degrees, the mean and standard deviation of the relative error between the modeled TOA reflectance and observed TOA reflectance in each band are better than 0.08% and 2.7% respectively. Meanwhile, compared with the TOA reflectance measured by Sentinel2B/MSI sensor for in B2/B3/B4/B8A/B12 bands, the relative error of the TOA reflectance predicted by the model is 0.01%~4%.

Song-Construction And Validation Of TOA Reflectance Reference Model-244Poster4_Cn_version.pdf
Song-Construction And Validation Of TOA Reflectance Reference Model-244Poster4_ppt_present.pdf


Poster
ID: 323 / Dr4 YSPS.1.1: 28
Poster for Dragon 4
Land & Environment: 31470 - Forest biophysical retrievals and land cover dynamics using multi-temporal, multi-sensor (SAR-optical-LiDAR) and multi-resolution EO sensors for China and selected Asian regions (FOREST Dragon 4)

Improved Reconstruction of Digital Terrain Models Below Tropical Forests Using Tomographic SAR Data Acquired at P Band

Mael Smessaert2,3, Ludovic Villard2, Laurent Polidori2, Sandrine Daniel3, Laurent Ferro Famil1

1University of Rennes 1, France; 2Cesbio, France; 3Capgemini, France

Digital Terrain Model (DTM) is one of the main products of Earth observation from space, and spaceborne SAR interferometry is a unanimously recognized technique for accurately mapping ground topography at a wide scale. Nevertheless, such approches meet difficulties over densely forested areas due to both wave penetration problems and signal decorrelation with time. In this context, the BIOMASS mission, which will operate the first orbital P-band radar in order the map forest biomass at global scale, is also expected to provide a global DTM over forested areas, as its larger wavelength and short revisit time allows to overcome both the aforementioned penetration and decorrelation issues. This poster proposes a technique for retrieving the topography of the ground lying below dense forest covers, such as tropical forests, based on the use of P band Polarimetric Tomographic SAR acquisitions (PolTomoSAR). It is based on the regularization of tomographic estimates performed according to geophysical constraints on the estimated surface. In particular, this techniques aims to prevent discontinuities due sudden and significant variations of scattering mechanisms and to avoid over filtering, generally associated to the estimation of PolTomoSAR covariance matrices. The performance of the proposed technique is assessed over data acquired by the ONERA RAMSES sensor at P band over the test site of Paracou, in French Guiana.



Poster
ID: 313 / Dr4 YSPS.1.1: 29
Poster for Dragon 4
Land & Environment: 31470 - Forest biophysical retrievals and land cover dynamics using multi-temporal, multi-sensor (SAR-optical-LiDAR) and multi-resolution EO sensors for China and selected Asian regions (FOREST Dragon 4)

A Covariance-based Feature Extraction Method for Temporal PolSAR

Jun Ni1, Qiang Yin1, Fan Zhang1, Wen Hong2

1Beijing University of Chemical Technology, China, People's Republic of; 2University of Chinese Academy of Sciences

With the rapid development of spaceborne SAR systems, temporal polarimetric SAR (PolSAR) image data has become an important research topic. The temporal data contain helpful information about the scene and are also related to the time evolution of the scene. Analyzing and developing this information in SAR time series is an essential and challenging task. Based on the time series polarization SAR data structure, this paper constructs the time series- polarimetric features. Through the characteristic analysis and dynamic analysis of the covariance matrix, the time-polarization features of the PolSAR image can be obtained. The time-polarimetric feature provides a feature reference basis for the temporal PolSAR classification.

Ni-A Covariance-based Feature Extraction Method for Temporal PolSAR-313Poster4_Cn_version.pdf
Ni-A Covariance-based Feature Extraction Method for Temporal PolSAR-313Poster4_ppt_present.pdf


Poster
ID: 327 / Dr4 YSPS.1.1: 31
Oral Presentation for Dragon 4
Land & Environment: 31470 - Forest biophysical retrievals and land cover dynamics using multi-temporal, multi-sensor (SAR-optical-LiDAR) and multi-resolution EO sensors for China and selected Asian regions (FOREST Dragon 4)

Forest Height Inversion Using X-Band Single-Pass InSAR Data Based on Multi-Level Model

Lei Zhao1, Erxue Chen1, Zengyuan Li1, Wangfei Zhang2, Kunpeng Xu1

1Institute of Forest Resources Information Techniques, Chinese Academy of Forestry; 2Southwest Forestry University

A multi-level model (MLM) for forest height inversion is introduced and investigated using X-band single-pass interferometric synthetic aperture radar (InSAR) data. Compared with the two-level model (TLM), as a generalized model, the MLM is more in line with the characteristics of forest structure and the scattering mechanism for X-band data. Based on the MLM model, three simplified MLM models were derived: TLMm, SINC and MTND. An improved method of calculating coherence considering the assumptions of the MLM model is proposed. Airborne X-band single-pass InSAR data and LiDAR H100 data were used to verify the proposed new approach. The results showed that the MTND model can obtain more reliable and accurate inversion results compared to the SINC model and the TLMm. And the inversion accuracy of forest height can be effectively improved by ensuring that the theoretical models and calculations of coherence obey the same assumptions.

Zhao-Forest Height Inversion Using X-Band Single-Pass InSAR Data Based-327Oral4.pdf


Poster
ID: 189 / Dr4 YSPS.1.1: 32
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32431 - Seismic Activity Monitoring and Lithosphere Deformation Detection by Radar Interferometry in China and Surrounding Regions

Sequential InSAR Time Series Deformation Monitoring of Land Subsidence and Rebound in Xi'an, China

Baohang Wang, Chaoying Zhao, Qin Zhang

Chang'an University, China, People's Republic of

The Xi’an, China has suffered from severe land subsidence and ground fissure hazards since the 1960s. With the progress of economic development and urbanization, groundwater was over-exploited for more than 50 years. Consequently, it had caused the formation of fourteen ground fissures accompanying land subsidence throughout the city. The maximum land subsidence rate reached 300 mm/year in 1996, and the maximum cumulative subsidence reached 3 m approximately in last 60 years, which has threatened and will continue to threaten the safety of urban artificial constructions.

InSAR time series deformation monitoring plays an important role in revealing the historical displacement of the Earth’s surface. In order to study the spatiotemporal characteristics of subsidence and ground fissures, previous studies show that there existed a close spatiotemporal relationship between land subsidence and the formation of earth fissures. The degradation of the aquifer system is the one of the key factors to these typical deformations. In order to alleviate the land subsidence and ground fissures caused by over-extraction of groundwater, the pumping groundwater was restricted in 1996, meanwhile, water was supplied from Heihe River. Moreover, cumulative volume of 1552800 m3 had been recharged in Xi'an from 2009 to 2014.

In order to retrieve the history of land subsidence in Xi’an, we employed the sequential estimation method to update the time series deformation dynamically, which is an efficient InSAR tool to update the surface deformation as quickly as possible, when the SAR image is acquired one by one. In the experimental section,we take 83 Sentinel-1A images acquired from 20 June 2015 to 17 July 2019 to show the performance of the method and to analyze the evolution of land subsidence in Xi'an, China. For the sequential InSAR time series deformation processing, we divide SAR data into two groups. The first group is the archived SAR data for parameters initialization. While the second group is newly received SAR image (i.e., a new SAR acquisition) to update the new deformation parameter.

Results show three surface deformation phenomena occurred in Xi’an city from 20 June 2015 to 17 July 2019, i.e. continuous land subsidence, slow uplift and rebound after long-term subsidence, which can be explained as the response to the underground water changes in different regions. As for the response tothe artificial water injection, the rebound pattern can be further divided into immediate elastic recovery deformation and time-dependent visco-elastic recovery deformation.

Wang-Sequential InSAR Time Series Deformation Monitoring-189Poster4_Cn_version.pdf
Wang-Sequential InSAR Time Series Deformation Monitoring-189Poster4_ppt_present.pdf


Poster
ID: 156 / Dr4 YSPS.1.1: 33
Poster for Dragon 4
Solid Earth & Disaster Risk Reduction: 32431 - Seismic Activity Monitoring and Lithosphere Deformation Detection by Radar Interferometry in China and Surrounding Regions

Mapping vertical crustal deformation over Weihe Basin, China using Sentinel-1 and ALOS-2 ScanSAR imagery

Yufen Niu1, Feifei Qu1, Wu Zhu1, Qin Zhang1, Zhong Lu2, Chaoying Zhao1, Wei Qu1, Yaxuan Hu3

1College of Geology Engineering and Geomatics, Chang’an University, Xi’an, 710054, China; 2Department of Earth Sciences, Southern Methodist University, Dallas, TX, 75275, USA; 3The Second Monitoring and Application Center, China Earthquake Administration, Xi’an 710054, China

Weihe Basin is located in Shaanxi Province, central China, bordering the south of Ordos block in the Weibei uplift belt, the north of North Qinling orogenic belt, the east of the southwestern margin of the Ordos arc structural belt, and the west of the Shanxi uplift belt, which plays an important role in the well-known Fen-Wei seismic belt, spanning 350km from east to west. Hundreds of active faults were discovered over the basin in history, and most of these deeply buried faults criss-crossed the basin . The main faults that control the sedimentary basin formation include Beishan Piedmont fault, Guanshan fault, Qinling North Piedmont fault, Chang'an-Lintong fault, and Lishan Piedmont fault. Weihe Basin is characterized by intense crustal activity, and more than 25 earthquakes have been recorded with magnitude larger than 5.0 since 1177. One MS 8.0 earthquake occurred in Huaxian was recorded in 1556, however, there are no documented cases greater than MS 5.5 since the 20th century.

In order to understand the structure and slip rate of the known fault zones, identify potential active faults as well as their activity intensities, and compensate for the existing discrete located GPS and leveling measurements in Weihe Basin, 92 scenes ascending Sentinel-1 (06/20/2015-05/30/2019) and 6 scenes descending ALOS-2 ScanSAR (04/01/2015-12/19/2018) datasets were utilized to derive LOS deformation velocity respectively. The geoid offset correction between EGM96 datum and WGS84 datum was applied to the 1-arc-second (~30 m) Shuttle Radar Topography Mission (SRTM) DEM, that is used as an external DEM to remove the topographic phase from the interferograms for both the Sentinel-1 and ALOS-2 ScanSAR processing. GACOS atmospheric products are employed to reduce the effects of tropospheric delay. Then the deformation components in the east-west and vertical directions are estimated using the descending and ascending InSAR images together over the entire basin. The standard deviation of vertical deformation between InSAR and leveling measurement is around 2 mm/yr. InSAR measurements allow us to position not only the previously known faults, but also new active fault not previously revealed, which indicates that the complex internal motion within the Weihe Basin could be controlled by multiple faults. Finally, we calculate the slip rates and blocking depths of the Longxian-Mazhao fault, Puyang-Lantian, the southern part of Weihe fault, and the Kouzhen-Guanshan fault, and evaluate their potentials to arise large earthquakes.

Niu-Mapping vertical crustal deformation over Weihe Basin, China using Sentinel-1 and ALOS-2 ScanSAR_Cn_version.pdf


 
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