基于图像欧氏距离的高光谱图像流形降维算法
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陈宏达, 普晗晔, 王斌, 张立明. 基于图像欧氏距离的高光谱图像流形降维算法[J]. 红外与毫米波学报, 2013, 32(5): 450. CHEN Hong-Da, PU Han-Ye, WANG Bin, ZHANG Li-Ming. Image Euclidean distance-based manifold dimensionality reduction algorithm for hyperspectral imagery[J]. Journal of Infrared and Millimeter Waves, 2013, 32(5): 450.