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Image denoising based on iterative generalized cross-validation and fast translation invariant

机译:基于迭代广义交叉验证和快速平移不变性的图像去噪

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摘要

Wavelet shrinkage is a promising method in image denoising, the key factor of which lies in the threshold selection. A fast and effective wavelet denoising method, called Iterative Generalized Cross-Validation and Fast Translation Invariant (IGCV-FTI) is proposed, which reduces the computation cost of the standard Generalized Cross-Validation (GCV) method and efficiently suppresses the Pseudo-Gibbs phenomena with an extra gain of 1-1.87 dB in PSNR compared with GCV. In the proposed approach, we establish a novel functional relation between the GCV results of two neighboring thresholds based on integer wavelet transform, and combine it with threshold-search interval optimization. As a result, the proposed IGCV reduces the time complexity of original GCV algorithm by two orders of magnitude. In addition, a recursion strategy is applied to expedite the translation invariant. The high efficiency and proficient capacity to remove noise make IGCV-FTI a good choice for image denoising. (C) 2015 Elsevier Inc. All rights reserved.
机译:小波收缩是图像去噪中一种很有前途的方法,其关键因素在于阈值的选择。提出了一种快速有效的小波去噪方法,称为迭代广义交叉验证和快速平移不变(IGCV-FTI),它降低了标准广义交叉验证(GCV)方法的计算成本,并有效地抑制了伪Gibbs现象。与GCV相比,PSNR的额外增益为1-1.87 dB。在所提出的方法中,我们基于整数小波变换在两个相邻阈值的GCV结果之间建立了一种新颖的函数关系,并将其与阈值搜索间隔优化相结合。结果,提出的IGCV将原始GCV算法的时间复杂度降低了两个数量级。另外,采用递归策略来加快平移不变性。 IGCV-FTI的高效率和熟练的去除噪声能力使其成为图像降噪的理想选择。 (C)2015 Elsevier Inc.保留所有权利。

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