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Robust Tensor Decomposition for Image Representation Based on Generalized Correntropy
2020
IEEE Transactions on Image Processing
Traditional tensor decomposition methods, e.g., two dimensional principal component analysis and two dimensional singular value decomposition, that minimize mean square errors, are sensitive to outliers. To overcome this problem, in this paper we propose a new robust tensor decomposition method using generalized correntropy criterion (Corr-Tensor). A Lagrange multiplier method is used to effectively optimize the generalized correntropy objective function in an iterative manner. The Corr-Tensor
doi:10.1109/tip.2020.3033151
pmid:33112745
fatcat:xey2gipafrfj5jf7pci3cfnclq