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An Enhanced Lowrank Algorithm for Image Denoising

机译:增强的低秩图像去噪算法

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There are great breakthroughs in image denoising based on image self-similarity and the introduction of sparse representation and low rank theory. Some state-of-the-art image restoration techniques, including BM3D and SAIST are brought forward and applied to various vision tasks. In this paper, we propose an enhanced SAIST algorithm for image denoising. These improvements are mainly implemented in the following aspects. First, when matching similar blocks, matching results are depended on block distances which affected by noise interference. Thus DCT pre-filtering is introduced before aggregation because it can effectively suppress measurement errors of block distances. Second, the relevance of image patches which affects the singular value thresholding is not considered in sample mean. So a weighted sample mean calculation method is proposed to make the singular value thresholding more adaptive. The experimental results show that this improved algorithm achieves a better performance than the original algorithm in terms of both objective criterion and subjective visual quality.
机译:基于图像自相似度的稀疏表示和低秩理论的引入在图像去噪方面取得了重大突破。提出了一些最新的图像恢复技术,包括BM3D和SAIST,并将其应用于各种视觉任务。在本文中,我们提出了一种用于图像去噪的增强型SAIST算法。这些改进主要在以下方面进行。首先,当匹配相似的块时,匹配结果取决于受噪声干扰影响的块距离。因此,DCT预滤波是在聚合之前引入的,因为它可以有效地抑制块距离的测量误差。其次,在样本均值中未考虑影响奇异值阈值化的图像补丁的相关性。为此,提出了一种加权样本均值计算方法,以使奇异值阈值处理更具适应性。实验结果表明,该改进算法在客观标准和主观视觉质量上均比原始算法具有更好的性能。

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