A Fast Data Driven Shrinkage of Singular Values for Arbitrary Rank Signal Matrix Denoising
Recovering a low-rank signal matrix from its noisy observation, commonly known as matrix denoising, is a fundamental inverse problem in statistical signal processing. Matrix denoising methods are generally based on shrinkage or thresholding of singular values with a predetermined shrinkage parameter...
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Zusammenfassung: | Recovering a low-rank signal matrix from its noisy observation, commonly
known as matrix denoising, is a fundamental inverse problem in statistical
signal processing. Matrix denoising methods are generally based on shrinkage or
thresholding of singular values with a predetermined shrinkage parameter or
threshold. However, most of the existing adaptive shrinkage methods use
multiple parameters to obtain a better flexibility in shrinkage. The optimal
value of these parameters using either cross-validation or Stein's principle.
In both the cases, the iterative estimation of various parameters render the
existing shrinkage methods computationally latent for most of the real-time
applications. This paper presents an efficient data dependent shrinkage
function whose parameters are estimated using Stein's principle but in a
non-iterative manner, thereby providing a comparatively faster shrinkage
method. In addition, the proposed estimator is found to be consistent with the
recently proposed asymptotically optimal estimators using the results from
random matrix theory. The experimental studies on artificially generated
low-rank matrices and on the magnetic resonant imagery data, show the efficacy
of the proposed denoising method. |
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DOI: | 10.48550/arxiv.1701.05223 |