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Remote Sensing Image Denoising via Low-Rank Tensor Approximation and Robust Noise Modeling
2020
Remote Sensing
Noise removal is a fundamental problem in remote sensing image processing. Most existing methods, however, have not yet attained sufficient robustness in practice, due to more or less neglecting the intrinsic structures of remote sensing images and/or underestimating the complexity of realistic noise. In this paper, we propose a new remote sensing image denoising method by integrating intrinsic image characterization and robust noise modeling. Specifically, we use low-Tucker-rank tensor
doi:10.3390/rs12081278
fatcat:hvjib33wbfcslpfqv65slukx3y