I. Introduction
In the past decades, with the rapid development of information acquisition technology, both the views and dimensions of acquired data are sharply increasing, resulting in that high-order data analysis becomes a hot topic in computer vision. Although the high-order data can provide more valuable information, it also greatly increases the difficulty of data analysis. Especially, the so- called “curse of dimensionality” has become a challenging problem to address. How to extract the most representable features from the high-order data without useful information loss is also a prominent problem in hyperspectral image (HSI) processing [1], [2].