TUP.P17.3

SEA CLUTTER SUPPRESSION FOR MARINE SURVEILLANCE RADAR BASED ON GENERATIVE ADVERSARIAL LEARNING

Jifang Pei, Yu Yang, Zhihao Fang, Weibo Huo, Peng Chen, Wenjing Wang, Jianyu Yang, University of Electronic Science and Technology of China (UESTC), China

Session:
TUP.P17: Machine Learning for Radar and SAR Application Poster

Track:
AI and Big Data

Location:
Poster Area 17

Presentation Time:
Tue, 18 Jul, 14:15 - 15:45 Pacific Time (UTC -8)

Session Co-Chairs:
Ronny Hänsch, German Aerospace Center and Ioannis Prapas, National Observatory of Athens and Ryo Natsuaki, The University of Tokyo
Session Managers:
Ge Jiang and Lanying Wang and Ayoti Banerjee and Shubham Awasthi
Presentation
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Session TUP.P17
TUP.P17.1: DEEP LEARNING FOR POLARIMETRIC RADAR QUANTITATIVE PRECIPITATION ESTIMATION: MODEL INTERPRETATION AND EXPLAINABILITY
Wenyuan Li, Ocean University of China, China; Haonan Chen, Colorado State University, United States; Lei Han, Ocean University of China, China
TUP.P17.2: INSAR PHASE FILTERING BY ATTENTION-BASED RESERVOIR COMPUTING FOR HIGH RELIABILITY
Bungo Konishi, Akira Hirose, Ryo Natsuaki, The University of Tokyo, Japan
TUP.P17.3: SEA CLUTTER SUPPRESSION FOR MARINE SURVEILLANCE RADAR BASED ON GENERATIVE ADVERSARIAL LEARNING
Jifang Pei, Yu Yang, Zhihao Fang, Weibo Huo, Peng Chen, Wenjing Wang, Jianyu Yang, University of Electronic Science and Technology of China (UESTC), China
TUP.P17.4: PREDICTION OF INSAR URBAN SURFACE TIME-SERIES DEFORMATION USING DEEP NEURAL NETWORKS
Yuhang Liu, Tao Chen, Jun Li, China University of Geosciences, China
TUP.P17.5: DEEP NEURAL NETWORKS FOR EVALUATING MICROWAVE SOUNDER DESIGNS
James MacKinnon, Antonia Gambacorta, Jeffrey Piepmeier, Mark Stephen, NASA Goddard Space Flight Center, United States; Rachael Kroodsma, University of Maryland/Goddard Space Flight Center, United States; Joseph Santanello, NASA Goddard Space Flight Center, United States; Greg Blumberg, Millersville University, United States; John Blaisdell, Science Applications International Corporation/Goddard Space Flight Center, United States; Isaac Moradi, University of Maryland/Goddard Space Flight Center, United States; Jie Gong, ERT, Inc, United States; Alexander Kotsakis, ERT, Inc./Goddard Space Flight Center, United States; Ian Adams, NASA Goddard Space Flight Center, United States
TUP.P17.7: Inversion and prediction of time-varying surface subsidence in coal mines by combining SBAS-InSAR and time-series prediction algorithms
XiaoWei Guo, Tao Chen, Jun Li, China University of Geosciences, China
TUP.P17.8: GENERATING HIGH RESOLUTION SAR IMAGES WITH LOSS FUNCTION CUSTOMIZATION
Lee Jung-Hoon, Kim Junwoo, School of Earth and Environmental Sciences, Seoul National University, South Korea; Kim Jae-Hyun, Department of Electrical and Computer Engineering, Ajou University, South Korea; Kim Duk-Jin, School of Earth and Environmental Sciences, Seoul National University, South Korea
TUP.P17.9: ESTIMATING NDVI FROM SAR IMAGES USING CONDITIONAL GENERATIVE ADVERSARIAL NETWORKS
Pietro Soglia, Paula Gonzalez, Izar Azpiroz, Urtzi Otamendi, Marco Quartulli, Vicomtech Foundation, Italy; Sergio Salata, AVS Added Value Industrial Engineering Solutions, Spain
TUP.P17.10: DEEP LEARNING-BASED LIKELIHOOD PHASE UNWRAPPING FOR MULTI-BASELINE INSAR INTERFEROGRAMS
Lifan Zhou, Changshu Institute of Technology, China; Hanwen Yu, Yong Wang, University of Electronic Science and Technology of China, China; Mengdao Xing, Xidian University, China
TUP.P17.11: A CNN-based interferogram filtering approach to enhance the co-seismic surface displacements identification by exploiting the EPOSAR DInSAR maps global archive
Adele Fusco, Sabatino Buonanno, Giovanni Zeni, Fernando Monterroso, CNR, Italy; Simone Atzori, INGV, Italy; Gloria Bordogna, Paola Carrara, Manuela Bonano, Ivana Zinno, Giovanni Onorato, Claudio De Luca, Francesco Casu, Michele Manunta, CNR, Italy; Muhammad Yasir, CNR-IREA,Parthenope University, Italy; Riccardo Lanari, CNR, Italy
Resources
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