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Dimensionality reduction based on determinantal point process and singular spectrum analysis for hyperspectral images

Chen, Weizhao; Yang, Zhijing; Cao, Faxian; Yan, Yijun; Wang, Meilin; Qing, Chunmei; Cheng, Yongqiang


Weizhao Chen

Zhijing Yang

Faxian Cao

Yijun Yan

Meilin Wang

Chunmei Qing

Yongqiang Cheng


Dimensionality reduction is of high importance in hyperspectral data processing, which can effectively reduce the data redundancy and computation time for improved classification accuracy. Band selection and feature extraction methods are two widely used dimensionality reduction techniques. By integrating the advantages of the band selection and feature extraction, the authors propose a new method for reducing the dimension of hyperspectral image data. First, a new and fast band selection algorithm is proposed for hyperspectral images based on an improved determinantal point process (DPP). To reduce the amount of calculation, the dual-DPP is used for fast sampling representative pixels, followed by k-nearest neighbour-based local processing to explore more spatial information. These representative pixel points are used to construct multiple adjacency matrices to describe the correlation between bands based on mutual information. To further improve the classification accuracy, two-dimensional singular spectrum analysis is used for feature extraction from the selected bands. Experiments show that the proposed method can select a low-redundancy and representative band subset, where both data dimension and computation time can be reduced. Furthermore, it also shows that the proposed dimensionality reduction algorithm outperforms a number of state-of-the-art methods in terms of classification accuracy.


Chen, W., Yang, Z., Cao, F., Yan, Y., Wang, M., Qing, C., & Cheng, Y. (2019). Dimensionality reduction based on determinantal point process and singular spectrum analysis for hyperspectral images. IET Image Processing, 13(2), 299-306.

Journal Article Type Article
Acceptance Date Aug 15, 2018
Online Publication Date Sep 5, 2018
Publication Date Feb 7, 2019
Deposit Date Sep 5, 2018
Publicly Available Date Sep 6, 2018
Journal IET Image Processing
Print ISSN 1751-9659
Electronic ISSN 1751-9667
Publisher Institution of Engineering and Technology (IET)
Peer Reviewed Peer Reviewed
Volume 13
Issue 2
Pages 299-306
Keywords Signal Processing; Electrical and Electronic Engineering; Software; Computer Vision and Pattern Recognition
Public URL
Publisher URL


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