Vectorial total variation model for multi-channel SAR image denoising
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Dept. of Mathematics and Systems Science, Science College, National University of Defense Technology,Dept. of Mathematics and Systems Science, Science College, National University of Defense Technology,Dept. of Mathematics and Systems Science, Science College, National University of Defense Technology

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    Abstract:

    The vectorial total variation model and algorithm are studied for multi-channel SAR image denoising. After introducing the vectorial total variation model, an accelerative fix-point iterative algorithm was proposed and its convergence was proved. By improving the filter coefficient of the fix-point iterative process, an adaptive vectorial total variation model was developed for multi-channel SAR image denoising, whose iterative algorithm and convergence theorem were present. The performance of denoising and resolution preservation of our models was tested by multi-polarimetric, multi-temporal RADARSAT-2 images, in addition to the validation of the convergence and the convergent speed of the proposed algorithms.

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LI Wen-Ping, WANG Zheng-Ming, XIE Mei-Hua. Vectorial total variation model for multi-channel SAR image denoising[J]. Journal of Infrared and Millimeter Waves,2012,31(1):61~66

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History
  • Received:November 03,2010
  • Revised:December 02,2010
  • Adopted:December 03,2010
  • Online: February 28,2012
  • Published:
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