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A new low-rank sparse image denoising algorithm based on non-local self-similarity

机译:基于非局部自相似度的低秩稀疏图像去噪新算法

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Aiming at the existing problems of denoising methods based low-rank and sparse representation that easily lose image details, resulting in low image denoising quality, we propose an image denoising method based on low-rank and sparse representations in a non-local framework. The proposed algorithm consists of two steps: firstly, similar image blocks are matched and grouped, a low-rank matrix recovery model is established, and then a random matrix theory is used to implement preliminary denoising; secondly, the artifacts in the image are removed by non-local sparse representation, and the noise atoms are clipped. Theoretical analysis and experimental results show that the proposed method can filter out noise better, retain image detail information, and obtain better image visual effects compared with the current popular denoising methods of the same kind.
机译:针对基于低秩稀疏表示的去噪方法存在的容易丢失图像细节,导致图像去噪质量低的问题,提出了一种在非局部框架下基于低秩稀疏表示的图像去噪方法。该算法包括两个步骤:首先,对相似的图像块进行匹配和分组,建立低秩矩阵恢复模型,然后使用随机矩阵理论进行初步去噪。其次,通过非局部稀疏表示去除图像中的伪像,并去除噪声原子。理论分析和实验结果表明,与目前流行的同类降噪方法相比,该方法可以更好地滤除噪声,保留图像细节信息,并获得更好的图像视觉效果。

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