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Joint image denoising using self-similarity based low-rank approximations

机译:使用基于自相似度的低秩逼近进行联合图像去噪

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摘要

The observed images are usually noisy due to data acquisition and transmission process. Therefore, image denoising is a necessary procedure prior to post-processing applications. The proposed algorithm exploits the self-similarity based low rank technique to approximate the real-world image in the multivariate analysis sense. It consists of two successive steps: adaptive dimensionality reduction of similar patch groups, and the collaborative filtering. For each target patch, the singular value decomposition (SVD) is used to factorize the similar patch group collected in a local search window by block-matching. Parallel analysis automatically selects the principal signal components by discarding the nonsignificant singular values. After the inverse SVD transform, the denoised image is reconstructed by the weighted averaging approach. Finally, the collaborative Wiener filtering is applied to further remove the noise. Experimental results show that the proposed algorithm surpasses the state-of-the-art methods in most cases.
机译:由于数据采集和传输过程,观察到的图像通常很吵。因此,图像去噪是后处理应用程序之前的必要步骤。所提出的算法利用基于自相似性的低秩技术来从多变量分析意义上逼近真实世界的图像。它包括两个连续的步骤:相似补丁组的自适应降维,以及协同过滤。对于每个目标补丁,奇异值分解(SVD)用于通过块匹配分解在本地搜索窗口中收集的相似补丁组。并行分析通过舍弃不重要的奇异值来自动选择主要信号分量。 SVD逆变换后,通过加权平均方法重建去噪图像。最后,协同维纳滤波被应用以进一步去除噪声。实验结果表明,该算法在大多数情况下都超过了现有技术。

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