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Statistical Modeling of Multi-channel SAR Images

Chapter

Abstract

Currently, with the advancement of sophisticated SAR imaging modes, such as multitemporal interferometry and polarimetry, the return backscatter results are presented in two or more channels [1, 2]. The SAR interferogram, achieved by multiplying the first image by the complex conjugate of the second one [3, 4], has become an important tool for multiple-channel SAR image interpretation.

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Copyright information

© National Defense Industry Press, Beijing and Springer Nature Singapore Pte Ltd. 2019

Authors and Affiliations

  1. 1.National University of Defense TechnologyChangshaChina

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