8 October 2014 Image denoising via sparse representation using rotational dictionary
Yibin Tang, Ning Xu, Aimin Jiang, Changping Zhu
Author Affiliations +
Abstract
A dictionary-learning-based image denoising algorithm is proposed in this paper. Since traditional methods seldom take into account the rotational invariance of dictionaries learned from image patches, an improved K-means singular value decomposition algorithm is developed. In our method, the rotational version of atoms is introduced to greedily match the noisy image in a sparse coding procedure. On the other hand, in a dictionary learning procedure, to maximize the diversity of atoms, a rotational operation on the residual error is adopted such that the rotational correlation among atoms is reduced. As the strategy exploits the rotational invariance of atoms, more intrinsic features existing in image patches can be effectively extracted. Experiments illustrate that the proposed method can achieve a better performance than some other well-developed denoising methods.
© 2014 SPIE and IS&T 0091-3286/2014/$25.00 © 2014 SPIE and IS&T
Yibin Tang, Ning Xu, Aimin Jiang, and Changping Zhu "Image denoising via sparse representation using rotational dictionary," Journal of Electronic Imaging 23(5), 053016 (8 October 2014). https://doi.org/10.1117/1.JEI.23.5.053016
Published: 8 October 2014
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CITATIONS
Cited by 4 scholarly publications.
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KEYWORDS
Associative arrays

Chemical species

Denoising

Image denoising

Algorithm development

Cameras

Matrices

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