DocumentCode
67376
Title
Dimensionality Reduction for Hyperspectral Data Based on Class-Aware Tensor Neighborhood Graph and Patch Alignment
Author
Yang Gao ; Xuesong Wang ; Yuhu Cheng ; Wang, Z. Jane
Author_Institution
Sch. of Inf. & Electr. Eng., China Univ. of Min. & Technol., Xuzhou, China
Volume
26
Issue
8
fYear
2015
fDate
Aug. 2015
Firstpage
1582
Lastpage
1593
Abstract
To take full advantage of hyperspectral information, to avoid data redundancy and to address the curse of dimensionality concern, dimensionality reduction (DR) becomes particularly important to analyze hyperspectral data. Exploring the tensor characteristic of hyperspectral data, a DR algorithm based on class-aware tensor neighborhood graph and patch alignment is proposed here. First, hyperspectral data are represented in the tensor form through a window field to keep the spatial information of each pixel. Second, using a tensor distance criterion, a class-aware tensor neighborhood graph containing discriminating information is obtained. In the third step, employing the patch alignment framework extended to the tensor space, we can obtain global optimal spectral-spatial information. Finally, the solution of the tensor subspace is calculated using an iterative method and low-dimensional projection matrixes for hyperspectral data are obtained accordingly. The proposed method effectively explores the spectral and spatial information in hyperspectral data simultaneously. Experimental results on 3 real hyperspectral datasets show that, compared with some popular vector- and tensor-based DR algorithms, the proposed method can yield better performance with less tensor training samples required.
Keywords
geophysical image processing; graph theory; hyperspectral imaging; iterative methods; matrix algebra; tensors; DR algorithm; class-aware tensor neighborhood graph; curse of dimensionality; data redundancy; dimensionality reduction; global optimal spectral-spatial information; hyperspectral data; hyperspectral datasets; image pixel; iterative method; low-dimensional projection matrixes; patch alignment framework; spatial information; tensor characteristic; tensor distance criterion; tensor subspace; window field; Educational institutions; Euclidean distance; Hyperspectral imaging; Tensile stress; Training; Vectors; Class-aware tensor neighborhood graph; dimensionality reduction (DR); hyperspectral data; patch alignment; tensor distance (TD);
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2014.2339222
Filename
6898000
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