16 - 21 July, 2023
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Summer School
International Geoscience and Remote Sensing Symposium
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Technical Program
Session WE2.R17
Paper WE2.R17.2
WE2.R17.2
QUANTIFYING THE ROBUSTNESS OF MODELS FOR SAR IMAGES CLASSIFICATION BY EXPLAINABLE FEATURE ATTRIBUTION
Wenxian Yu, Shanghai Jiaotong University, China; Weiwei Guo, Tongji University, China; Jing Li, Academy military sciences, China; Tao Zhang, Shanghai Jiaotong University, China
Session:
WE2.R17: Opening the Black Box: Explainable AI/ML in Remote Sensing Analysis II
Oral
Track:
Community-Contributed Sessions
Location:
Room 212/214
Presentation Time:
Wed, 19 Jul, 10:27 - 10:39 Pacific Time (UTC -8)
Session Co-Chairs:
Amanda Ziemann, Los Alamos National Laboratory and Eric Flynn, Los Alamos National Laboratory
Session Manager:
Al Adil Al Hinai
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Session WE2.R17
WE2.R17.1: IMPLEMENTATION OF EXPLAINABLE AI TO MAP HIERARCHICAL HABITAT SELECTION IN BIRDS
Akash Anand, Volker C Radeloff, Anna Pidgeon, Ryan Buron, Elena Razenkova, University of Wisconsin-Madison, United States; Jennifer Timmer, Bird Conservancy of the Rockies, United States
WE2.R17.2: QUANTIFYING THE ROBUSTNESS OF MODELS FOR SAR IMAGES CLASSIFICATION BY EXPLAINABLE FEATURE ATTRIBUTION
Wenxian Yu, Shanghai Jiaotong University, China; Weiwei Guo, Tongji University, China; Jing Li, Academy military sciences, China; Tao Zhang, Shanghai Jiaotong University, China
WE2.R17.3: CREDIBLE RECOGNITION OF RADAR IMAGES: INTERPRETABILITY METRIC AND CLASSIFICATION SCORE
Amir Hosein Oveis, Radar and Surveillance Systems (RaSS) Laboratory- CNIT, Italy; Elisa Giusti, Radar and Surveillance Systems (RaSS) Laboratory- CNIT, Italy; Selenia Ghio, Radar and Surveillance Systems (RaSS) Laboratory- CNIT, Italy; Giulio Meucci, Marco Martorella, Radar and Surveillance Systems (RaSS) Laboratory-CNIT, Italy
WE2.R17.4: TOWARDS EXPLAINABLE AI4EO: AN EXPLAINABLE DEEP LEARNING APPROACH FOR CROP TYPE MAPPING USING SATELLITE IMAGES TIME SERIES
Adel Abbas, Michele Linardi, Etienne Vareille, CY Cergy Paris Université, France; Vassillis Christophides, ENSEA Cergy, France; Claudia Paris, University of Twente,, Netherlands
WE2.R17.5: WILDFIRE DANGER FORECASTING WITH DEEP LEARNING UNDER LABEL NOISE
Spyros Kondylatos, Ioannis Prapas, National Observatory of Athens, University of Valencia, Greece; Ioannis Papoutsis, National Observatory of Athens, Greece; Gustau Camps-Valls, University of Valencia, Spain
Resources
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