MDL Denoising Revisited
摘要
We refine and extend an earlier MDL denoising criterion for wavelet-based denoising. We start by showing that the denoising problem can be reformulated as a clustering problem, where the goal is to obtain separate clusters for informative and non-informative wavelet coefficients, respectively. This suggests two refinements, adding a code-length for the model index, and extending the model in order to account for subband-dependent coefficient distributions. A third refinement is derivation of soft thresholding inspired by predictive universal coding with weighted mixtures. We propose a practical method incorporating all three refinements, which is shown to achieve good performance and robustness in denoising both artificial and natural signals.
引用
@article{arxiv.cs/0609138,
title = {MDL Denoising Revisited},
author = {Teemu Roos and Petri Myllymäki and Jorma Rissanen},
journal= {arXiv preprint arXiv:cs/0609138},
year = {2016}
}
备注
Submitted to IEEE Transactions on Information Theory, June 2006