Share Email Print

Proceedings Paper

Compressed hyperspectral image sensing with joint sparsity reconstruction
Author(s): Haiying Liu; Yunsong Li; Jing Zhang; Juan Song; Pei Lv
Format Member Price Non-Member Price
PDF $17.00 $21.00

Paper Abstract

Recent compressed sensing (CS) results show that it is possible to accurately reconstruct images from a small number of linear measurements via convex optimization techniques. In this paper, according to the correlation analysis of linear measurements for hyperspectral images, a joint sparsity reconstruction algorithm based on interband prediction and joint optimization is proposed. In the method, linear prediction is first applied to remove the correlations among successive spectral band measurement vectors. The obtained residual measurement vectors are then recovered using the proposed joint optimization based POCS (projections onto convex sets) algorithm with the steepest descent method. In addition, a pixel-guided stopping criterion is introduced to stop the iteration. Experimental results show that the proposed algorithm exhibits its superiority over other known CS reconstruction algorithms in the literature at the same measurement rates, while with a faster convergence speed.

Paper Details

Date Published: 16 September 2011
PDF: 10 pages
Proc. SPIE 8157, Satellite Data Compression, Communications, and Processing VII, 815703 (16 September 2011); doi: 10.1117/12.895425
Show Author Affiliations
Haiying Liu, Xidian Univ. (China)
Yunsong Li, Xidian Univ. (China)
Jing Zhang, Xidian Univ. (China)
Juan Song, Xidian Univ. (China)
Pei Lv, Xi'an Institute of Optics and Precision Mechanics (China)

Published in SPIE Proceedings Vol. 8157:
Satellite Data Compression, Communications, and Processing VII
Bormin Huang; Antonio J. Plaza; Carole Thiebaut, Editor(s)

© SPIE. Terms of Use
Back to Top