降噪
非本地手段
稀疏逼近
计算机科学
人工智能
视频去噪
块(置换群论)
维纳滤波器
冗余(工程)
像素
转化(遗传学)
算法
模式识别(心理学)
数学
图像去噪
视频处理
操作系统
基因
化学
视频跟踪
生物化学
多视点视频编码
几何学
作者
Kostadin Dabov,Alessandro Foi,Vladimir Katkovnik,Karen Egiazarian
标识
DOI:10.1109/tip.2007.901238
摘要
We propose a novel image denoising strategy based on an enhanced sparse representation in transform domain. The enhancement of the sparsity is achieved by grouping similar 2D image fragments (e.g., blocks) into 3D data arrays which we call "groups." Collaborative Altering is a special procedure developed to deal with these 3D groups. We realize it using the three successive steps: 3D transformation of a group, shrinkage of the transform spectrum, and inverse 3D transformation. The result is a 3D estimate that consists of the jointly filtered grouped image blocks. By attenuating the noise, the collaborative filtering reveals even the finest details shared by grouped blocks and, at the same time, it preserves the essential unique features of each individual block. The filtered blocks are then returned to their original positions. Because these blocks are overlapping, for each pixel, we obtain many different estimates which need to be combined. Aggregation is a particular averaging procedure which is exploited to take advantage of this redundancy. A significant improvement is obtained by a specially developed collaborative Wiener filtering. An algorithm based on this novel denoising strategy and its efficient implementation are presented in full detail; an extension to color-image denoising is also developed. The experimental results demonstrate that this computationally scalable algorithm achieves state-of-the-art denoising performance in terms of both peak signal-to-noise ratio and subjective visual quality.
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