Image Denoising with Kernels based on Natural Image Relations
Valero Laparra, Juan Guti\'errez, Gustavo Camps-Valls, Jes\'us Malo

TL;DR
This paper introduces a flexible, machine learning-based wavelet domain image denoising method that captures natural image relations using support vector regression and mutual information, outperforming traditional methods especially with complex noise.
Contribution
It proposes a non-parametric, support vector regression approach that encodes natural image wavelet relations for denoising, adaptable to various noise sources without explicit modeling.
Findings
Outperforms conventional wavelet denoising methods assuming coefficient independence.
Comparable to state-of-the-art methods for Gaussian noise.
Provides superior results with complex, realistic noise sources.
Abstract
A successful class of image denoising methods is based on Bayesian approaches working in wavelet representations. However, analytical estimates can be obtained only for particular combinations of analytical models of signal and noise, thus precluding its straightforward extension to deal with other arbitrary noise sources. In this paper, we propose an alternative non-explicit way to take into account the relations among natural image wavelet coefficients for denoising: we use support vector regression (SVR) in the wavelet domain to enforce these relations in the estimated signal. Since relations among the coefficients are specific to the signal, the regularization property of SVR is exploited to remove the noise, which does not share this feature. The specific signal relations are encoded in an anisotropic kernel obtained from mutual information measures computed on a representative…
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Taxonomy
TopicsImage and Signal Denoising Methods · Advanced Image Fusion Techniques · Remote-Sensing Image Classification
