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Image Denoising Algorithm Based on Adaptive Singular Value Threshold

机译:基于自适应奇异值阈值的图像去噪算法

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Non-local similarity images play a huge role in image denoising tasks. Many of the existing denoising algorithms have problems in that the edge information is too smooth, the reconstruction details are insufficient, and artifacts are easily generated while removing noise. In order to solve these shortcomings and improve the denoising accuracy, we propose a denoising algorithm based on non-local similarity and adaptive singular value threshold (ASVT). The algorithm consists of three basic steps: block matching grouping, ASVT denoising, and aggregation. First, similar image patches are grouped by block matching method, and each similar block group is used as a group matrix for each column of the matrix. Then, under the framework of image non-local similarity and low rank approximation, the denoising problem is transformed into low rank matrix approximation problem, which is solved by ASVT. Finally, all processed image patches are aggregated to produce an initial denoised image. In order to effectively avoid the influence of noise residual on denoising, the denoising result is further improved by the back projection strategy, and more detailed features are retained. Experimental results clearly show that the proposed algorithm is competitive with the current state-of-the-art denoising algorithms in terms of both quantitative measure and subjective visual quality and can retain more details and improve the smoothing problem.
机译:非局部相似度图像在图像去噪任务中起着巨大的作用。许多现有的去噪算法具有以下问题:边缘信息太平滑,重建细节不足,并且在去除噪声的同时容易产生伪像。为了解决这些缺点并提高去噪精度,我们提出了一种基于非局部相似度和自适应奇异值阈值(ASVT)的去噪算法。该算法包括三个基本步骤:块匹配分组,ASVT去噪和聚合。首先,通过块匹配方法对相似图像块进行分组,并且将每个相似块组用作矩阵的每一列的组矩阵。然后,在图像非局部相似度和低秩逼近的框架下,将去噪问题转化为低秩矩阵逼近问题,由ASVT解决。最后,将所有处理过的图像块进行汇总以生成初始去噪图像。为了有效避免噪声残留对降噪的影响,通过反投影策略进一步提高了降噪效果,并保留了更详细的功能。实验结果清楚地表明,所提出的算法在定量测量和主观视觉质量方面均与当前最新的去噪算法竞争,并且可以保留更多细节并改善平滑问题。

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