Title :
Semisupervised Discriminant Analysis for Hyperspectral Imagery With Block-Sparse Graph
Author :
Kun Tan ; Songyang Zhou ; Qian Du
Author_Institution :
Jiangsu Key Lab. of Resources & Environ. Inf. Eng., China Univ. of Min. & Technol., Xuzhou, China
Abstract :
In this letter, a semisupervised block-sparse graph is proposed for discriminant analysis of hyperspectral imagery. To overcome the difficulty of not having enough training samples in the previously developed block-sparse graph approach, unlabeled samples are selected to participate in graph construction. Both sparse and collaborative representations are used for unlabeled sample selection. The experimental results demonstrate that the proposed semisupervised block-sparse graph can significantly outperform the supervised version with limited training samples. The sparse and collaborative representation-based selection methods perform comparably with the collaborative version requiring much lower computational cost.
Keywords :
geophysical image processing; graph theory; hyperspectral imaging; image representation; image sampling; learning (artificial intelligence); hyperspectral imagery; semisupervised block-sparse graph approach; semisupervised discriminant analysis; sparse collaborative representation-based selection method; training sample; unlabeled sample selection; Accuracy; Collaboration; Hyperspectral imaging; Support vector machines; Training; Block-sparse graph; classification; collaborative representation; hyperspectral data; semisupervised learning; sparse graph; sparse representation;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2015.2424963