Sub-pixel mapping based on BP neural network with multiple shifted remote sensing images
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Joint Research Laboratory on Spatial Information,The Hong Kong Polytechnic University and Wuhan University,School of Remote Sensing and Information Engineering,Wuhan University,Department of Land Surveying and Geo-Informatics,The Hong Kong Polytechnic University

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    Abstract:

    A new sub-pixel mapping method is presented in this paper, which makes use of multiple shifted remote sensing images to enhance the back-propagation neural network(BPNN)-based sub-pixel mapping method. Different from the original BPNN method that uses a single observed coarse spatial resolution image, the new method integrates multiple coarse spatial resolution images that are shifted from each other to determine the probability of a sub-pixel belonging to each class. The probabilities and land cover fractions are then used to allocate classes for sub-pixels. The proposed method can decrease the uncertainty and errors in BPNN-based sub-pixel mapping. Experimental results show that with both visual and quantitative evaluation, the proposed method can obtain more accurate sub-pixel mapping results.

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SHI Wen-Zhong, ZHAO Yuan-Ling, WANG Qun-Ming. Sub-pixel mapping based on BP neural network with multiple shifted remote sensing images[J]. Journal of Infrared and Millimeter Waves,2014,33(5):527~532

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History
  • Received:April 30,2013
  • Revised:September 06,2013
  • Adopted:September 06,2013
  • Online: November 13,2014
  • Published:
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