My IGARSS 2019 Schedule

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Session Detail

Session Title THP2.PA: Neural Networks in Polarimetry
Presentation Mode Poster
Session Time Thursday, 01 August, 15:20 - 16:20
Location Room 501-502: Poster Area A
Session ChairKostas Papathanassiou, German Aerospace Center (DLR)

  THP2.PA.1: POLSAR IMAGE CLASSIFICATION BASED ON POLARIMETRIC SCATTERING CODING AND SPARSE SUPPORT MATRIX MACHINE
         Xu Liu; Xidian University
         Licheng Jiao; Xidian University
         Dan Zhang; Xidian University
         Fang Liu; Xidian University

  THP2.PA.2: AN ACTIVE DEEP LEARNING APPROACH FOR MINIMALLY-SUPERVISED POLSAR IMAGE CLASSIFICATION
         Haixia Bi; University of Derby
         Feng Xu; Fudan University
         Zhiqiang Wei; Xi’an Electronics and Engineering Institute
         Yibo Han; Nanyang Institute of Technology
         Yuanlong Cui; University of Derby
         Yong Xue; University of Derby
         Zongben Xu; Xi’an Jiaotong University

  THP2.PA.3: A REVIEW OF POLSAR IMAGE CLASSIFICATION: FROM POLARIMETRY TO DEEP LEARNING
         Haipeng Wang; Fudan University
         Feng Xu; Fudan University
         Ya-Qiu Jin; Fudan University

  THP2.PA.4: COMPLEX-VALUED WISHART STACKED AUTO-ENCODER NETWORK FOR POLSAR IMAGE CLASSIFICATION
         Wen Xie; Xi'an University of Posts and Telecommunications
         Gaini Ma; Xi'an University of Posts and Telecommunications
         Wenqiang Hua; Xi'an University of Posts and Telecommunications
         Feng Zhao; Xi'an University of Posts and Telecommunications

  THP2.PA.5: SEMI-SUPERVISED RECURRENT COMPLEX-VALUED CONVOLUTION NEURAL NETWORK FOR POLSAR IMAGE CLASSIFICATION
         Feng Zhao; Xi'an University of Posts and Telecommunications
         Gaini Ma; Xi'an University of Posts and Telecommunications
         Wen Xie; Xi'an University of Posts and Telecommunications
         Hanqiang Liu; Shaanxi Normal University

  THP2.PA.6: DUAL-CHANNEL CONVOLUTIONAL NEURAL NETWORK FOR POLARIMETRIC SAR IMAGES CLASSIFICATION
         Wenqiang Hua; Xi’an University of Posts and Telecommunications
         Shuang Wang; Xidian University
         Wen Xie; Xi’an University of Posts and Telecommunications
         Yanhe Guo; Xidian University
         Xiaomin Jin; Xi’an University of Posts and Telecommunications

  THP2.PA.7: POLARIMETRIC SAR IMAGE SUPER-RESOLUTION VIA DEEP CONVOLUTIONAL NEURAL NETWORK
         Liupeng Lin; Wuhan University
         Jie Li; Wuhan University
         Qiangqiang Yuan; Wuhan University
         Huanfeng Shen; Wuhan University

  THP2.PA.8: POLSAR IMAGE CLASSIFICATION VIA COMPLEX-VALUED CONVOLUTIONAL NEURAL NETWORK COMBINING MEASURED DATA AND ARTIFICIAL FEATURES
         Xianxiang Qin; Information and Navigation College, Air Force Engineering University
         Tao Hu; Information and Navigation College, Air Force Engineering University
         Huanxin Zou; College of Electronic Science, National University of Defense Technology
         Wangsheng Yu; Information and Navigation College, Air Force Engineering University
         Peng Wang; Information and Navigation College, Air Force Engineering University

  THP2.PA.9: POLSAR TERRAIN CLASSIFICATION BASED ON DENOISING-CNN
         Yanhe Guo; Xidian University
         Shuang Wang; Xidian University
         Guoxin Song; Xidian University
         Yongqiang Zhao; Xidian University
         Wenqiang Hua; Xi'an University of Posts and Telecommunication
         Feihang Liu; Xidian University