Spatially adaptive alpha-rooting in BM3D sharpening
نویسندگان
چکیده
The block-matching and 3-D filtering (BM3D) algorithm is currently one of the most powerful and effective image denoising procedures. It exploits a specific nonlocal image modelling through grouping and collaborative filtering. Grouping finds mutually similar 2-D image blocks and stacks them together in 3-D arrays. Collaborative filtering produces individual estimates of all grouped blocks by filtering them jointly, through transform-domain shrinkage of the 3-D arrays (groups). BM3D can be combined with transform-domain alpha-rooting in order to simultaneously sharpen and denoise the image. Specifically, the thresholded 3-D transform-domain coefficients are modified by taking the α-root of their magnitude for some α > 1, thus amplifying the differences both within and between the grouped blocks. While one can use a constant (global) α throughout the entire image, further performance can be achieved by allowing different degrees of sharpening in different parts of the image, based on content-dependent information. We propose to vary the value of α used for sharpening a group through weighted estimates of the lowfrequency, edge, and high-frequency content of the average block in the group. This is shown to be a viable approach for image sharpening, and in particular it can provide an improvement (both visually and in terms of PSNR) over its global non-adaptive counterpart.
منابع مشابه
Joint Image Sharpening and Denoising by 3d Transform-domain Collaborative Filtering
In order to simultaneously sharpen image details and attenuate noise, we propose to combine the recent blockmatching and 3D Þltering (BM3D) denoising approach, based on 3D transform-domain collaborative Þltering, with alpha-rooting, a transform-domain sharpening technique. The BM3D exploits grouping of similar image blocks into 3D arrays (groups) on which collaborative Þltering (by hard-thresho...
متن کاملImage Deblurring by Augmented Langrangian with Bm3d Frame Prior
Spatially adaptive nonlocal patch-wise estimation is one of the most promising recent directions in image processing. Within this framework, a number of Block Matching 3-D filtering (BM3D) algorithms have been developed for different imaging problems [1], [2], [3]. In this paper we present the analysis/synthesis frames for BM3D image modeling and use them to develop novel recursive deblurring a...
متن کاملImage Denoising based on Adaptive BM3D and Singular Value Decomposition
In this work a new version of block-matching and 3D filtering (BM3D) denoising approach introduced by Dabov et al. for denoising the image corrupted by additive white Gassian noise is proposed. The BM3D performs collaborative filtering to the 3D image groups composed by similar image blocks with the fixed hard-thresholding operator. The proposed version of BM3D adopts adaptive block-matching th...
متن کاملImage and Video Super-resolution via Spatially Adaptive Block-matching Filtering
In our recent work [6], we proposed an algorithm for image upsampling based on alternation of two procedures: spatially adaptive Þltering in image domain and projection on the observationconstrained subspace in a wavelet domain. The nonlocal BlockMatching 3-D (BM3D) Þlter was used to suppress ringing and reconstruct missing detail coefÞcients. Here we generalize this method in two aspects. Firs...
متن کاملNonlocal Collaborative l0-Norm Prior for Image Denoising
Spatially adaptive nonparametric regression estimation is one of the most promising recent directions in image processing. The Transforms and Spectral Techniques Research Group at the Department of Signal Processing, Tampere University of Technology, has been active in this novel eld starting from about 2002. The results achieved with application to di¤erent image and video processing problems...
متن کامل