Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4605256 | Applied and Computational Harmonic Analysis | 2012 | 18 Pages |
Abstract
We conduct an asymptotic risk analysis of the nonlocal means image denoising algorithm for the Horizon class of images that are piecewise constant with a sharp edge discontinuity. We prove that the mean square risk of an optimally tuned nonlocal means algorithm decays according to , for an n×n-pixel image with ϵ>0. This decay rate is an improvement over some of the predecessors of this algorithm, including the linear convolution filter, median filter, and the SUSAN filter, each of which provides a rate of only n−2/3. It is also within a logarithmic factor from optimally tuned wavelet thresholding. However, it is still substantially lower than the optimal minimax rate of n−4/3.
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