Structured sparse model based feature selection and classification for hyperspectral imagery
Date
Authors
Qian, Yuntao
Zhou, Jun
Ye, Minchao
Wang, Qi
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE Geoscience and Remote Sensing Society
Abstract
Sparse modeling is a powerful framework for data analysis and processing. It is especially useful for high-dimensional regression and classification problems in which a large number of feature variables exist but the amount of training samples is limited. In this paper, we address the problems of feature description, feature selection and classifier design for hyperspectral images using structured sparse models. A linear sparse logistic regression model is proposed to combine feature selection and pixel classification into a regularized optimization problem with the constraint of sparsity. To explore the structured features, three-dimensional discrete wavelet transform (3D-DWT) is employed, which processes the hyperspectral data cube as a whole tensor instead of adapting the data to a vector or matrix. This allows more effective capturing of the spatial and spectral structure. The structure of the 3D-DWT features is imposed on the sparse model by group LASSO which selects the features on the group level. The advantages of our method are validated on the real hyperspectral data.
Description
Citation
Collections
Source
Structured sparse model based feature selection and classification for hyperspectral imagery
Type
Book Title
Entity type
Access Statement
License Rights
Restricted until
2037-12-31
Downloads
File
Description