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ICIAR
2010
Springer

Structural Similarity-Based Approximation of Signals and Images Using Orthogonal Bases

13 years 9 months ago
Structural Similarity-Based Approximation of Signals and Images Using Orthogonal Bases
The structural similarity (SSIM) index has been shown to be an useful tool in a wide variety of applications that involve the assessment of image quality and similarity. However, in-depth studies are still lacking on how to incorporate it for signal representation and approximation problems, where minimal mean squared error is still the dominant optimization criterion. Here we examine the problem of best approximation of signals and images by maximizing the SSIM between them. In the case of a decomposition of a signal in terms of an orthonormal basis, the optimal SSIM-based coefficients are determined with a surprisingly simple approach, namely, a scaling of the optimal L2 coefficients. We then examine a very simple algorithm to maximize SSIM with a constrained number of basis functions. The algorithm is applied to the DCT approximation of images.
Dominique Brunet, Edward R. Vrscay, Zhou Wang
Added 19 Jul 2010
Updated 19 Jul 2010
Type Conference
Year 2010
Where ICIAR
Authors Dominique Brunet, Edward R. Vrscay, Zhou Wang
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