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Kernel Joint Sparse Representation Based on Self-Paced Learning for Hyperspectral Image Classification
2019
Remote Sensing
By means of joint sparse representation (JSR) and kernel representation, kernel joint sparse representation (KJSR) models can effectively model the intrinsic nonlinear relations of hyperspectral data and better exploit spatial neighborhood structure to improve the classification performance of hyperspectral images. However, due to the presence of noisy or inhomogeneous pixels around the central testing pixel in the spatial domain, the performance of KJSR is greatly affected. Motivated by the
doi:10.3390/rs11091114
fatcat:7qpcgbtmcfgfxpjbs4aziiednu