Expand this Topic clickable element to expand a topic
Skip to content
Optica Publishing Group
  • Journal of the Optical Society of Korea
  • Vol. 20,
  • Issue 6,
  • pp. 752-761
  • (2016)

Destripe Hyperspectral Images with Spectral-spatial Adaptive Unidirectional Variation and Sparse Representation

Open Access Open Access

Abstract

Hyperspectral images are often contaminated with stripe noise, which severely degrades the imaging quality and the precision of the subsequent processing. In this paper, a variational model is proposed by employing spectral-spatial adaptive unidirectional variation and a sparse representation. Unlike traditional methods, we exploit the spectral correction and remove stripes in different bands and different regions adaptively, instead of selecting parameters band by band. The regularization strength adapts to the spectrally varying stripe intensities and the spatially varying texture information. Spectral correlation is exploited via dictionary learning in the sparse representation framework to prevent spectral distortion. Moreover, the minimization problem, which contains two unsmooth and inseparable l1-norm terms, is optimized by the split Bregman approach. Experimental results, on datasets from several imaging systems, demonstrate that the proposed method can remove stripe noise effectively and adaptively, as well as preserve original detail information.

© 2016 Optical Society of Korea

PDF Article
More Like This
Robust destriping method with unidirectional total variation and framelet regularization

Yi Chang, Houzhang Fang, Luxin Yan, and Hai Liu
Opt. Express 21(20) 23307-23323 (2013)

Sparse representations for online-learning-based hyperspectral image compression

İrem Ülkü and Behçet Uğur Töreyin
Appl. Opt. 54(29) 8625-8631 (2015)

HyperColorization: propagating spatially sparse noisy spectral clues for reconstructing hyperspectral images

M. Kerem Aydin, Qi Guo, and Emma Alexander
Opt. Express 32(7) 10761-10776 (2024)

Cited By

Optica participates in Crossref's Cited-By Linking service. Citing articles from Optica Publishing Group journals and other participating publishers are listed here.


Select as filters


Select Topics Cancel
© Copyright 2024 | Optica Publishing Group. All Rights Reserved