Adaptive BM3D Algorithm for Image Denoising Using Coefficient of Variation

Bing Song, Z. Duan, Yongxin Gao, Teng Shao
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引用次数: 2

Abstract

Block matching 3D (BM3D) algorithm has shown powerful image denoising capability. This is achieved by block-matching, filtering and aggregating the three-dimensional arrays generated from noisy images. However, high computational cost, inadequate recovery of edge information, etc., limit its application. In this paper, we propose to reduce its high computational cost by an adaptive algorithm based on pre-classification using coefficient of variation. After pre-classification, we obtain two block subsets with different local structural information. In the subset with complex changes, called structural region, size-adaptive reference block matching is adopted for its blocks. In the subset with uniform variation, called flat region, the original size-fixed reference block matching procedure is applied. The adaptive algorithm can significantly reduce the traversal range of the BM3D algorithm for matching, and increase the similarity of the reference block size and the target block (the block to be processed) size if they are similar. This will lead to better removal of noise with lower computational cost. Experimental results show that computational cost of the adaptive algorithm is significantly reduced with close denoising performance to the original BM3D algorithm.
基于变异系数的自适应BM3D图像去噪算法
块匹配3D (BM3D)算法显示出强大的图像去噪能力。这是通过块匹配、滤波和聚合由噪声图像产生的三维阵列来实现的。但是,计算成本高、边缘信息恢复不足等问题限制了其应用。本文提出了一种基于变异系数预分类的自适应算法来降低其高昂的计算成本。经过预分类,我们得到了两个具有不同局部结构信息的块子集。在变化复杂的子集结构区域中,对其块采用自适应大小的参考块匹配。在变化均匀的子集,即平坦区域,采用原始尺寸固定的参考块匹配过程。自适应算法可以显著减小BM3D算法进行匹配的遍历范围,如果参考块大小与目标块(待处理块)大小相似,则可以增加它们的相似度。这将导致以更低的计算成本更好地去除噪声。实验结果表明,自适应算法的计算量显著降低,降噪性能接近原BM3D算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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