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Proceedings Paper

Spectrum recovery method based on sparse representation for segmented multi-Gaussian model
Author(s): Yidan Teng; Ye Zhang; Chunli Ti; Nan Su
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Paper Abstract

Hyperspectral images can realize crackajack features discriminability for supplying diagnostic characteristics with high spectral resolution. However, various degradations may generate negative influence on the spectral information, including water absorption, bands-continuous noise. On the other hand, the huge data volume and strong redundancy among spectrums produced intense demand on compressing HSIs in spectral dimension, which also leads to the loss of spectral information. The reconstruction of spectral diagnostic characteristics has irreplaceable significance for the subsequent application of HSIs. This paper introduces a spectrum restoration method for HSIs making use of segmented multi-Gaussian model (SMGM) and sparse representation. A SMGM is established to indicating the unsymmetrical spectral absorption and reflection characteristics, meanwhile, its rationality and sparse property are discussed. With the application of compressed sensing (CS) theory, we implement sparse representation to the SMGM. Then, the degraded and compressed HSIs can be reconstructed utilizing the uninjured or key bands. Finally, we take low rank matrix recovery (LRMR) algorithm for post processing to restore the spatial details. The proposed method was tested on the spectral data captured on the ground with artificial water absorption condition and an AVIRIS-HSI data set. The experimental results in terms of qualitative and quantitative assessments demonstrate that the effectiveness on recovering the spectral information from both degradations and loss compression. The spectral diagnostic characteristics and the spatial geometry feature are well preserved.

Paper Details

Date Published: 19 September 2016
PDF: 6 pages
Proc. SPIE 9976, Imaging Spectrometry XXI, 99760V (19 September 2016); doi: 10.1117/12.2237269
Show Author Affiliations
Yidan Teng, Harbin Institute of Technology (China)
Ye Zhang, Harbin Institute of Technology (China)
Chunli Ti, Harbin Institute of Technology (China)
Nan Su, Harbin Institute of Technology (China)

Published in SPIE Proceedings Vol. 9976:
Imaging Spectrometry XXI
John F. Silny; Emmett J. Ientilucci, Editor(s)

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