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Image de-noising based on weight improved non-local means filtering algorithm

机译:基于权重改进的非局部均值滤波算法的图像去噪

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摘要

An improved non-local means filter algorithm is proposed. The common NLM algorithm only considers the Euclidean distance between pixel values as the calculation standard of weights, neglects the spatial position relationship of pixels and the similarity of texture details between image blocks, which results in the distortion of image structure after filtering, and the edge information is missing. To solve this problem, the author uses the spatial position of pixels in the image to improve the Euclidean distance. At the same time, the structural similarity index measurement (SSIM) is used to measure the similarity of neighbourhood image blocks to obtain the similarity weight, using this weight, the Euclidean distance of the image block is weighted again to reduce the weight of image blocks with low structural similarity. At the same time, the weight of the image blocks with high structural similarity is increased to achieve the ability to maintain the edge information. The experimental results show that the proposed algorithm effectively maintains the edge and detail of the image, and is superior to the conventional NLM algorithm in terms of PSNR and SSIM indicators.
机译:提出了一种改进的非局部均值滤波算法。常见的NLM算法仅将像素值之间的欧几里得距离作为权重的计算标准,而忽略了像素的空间位置关系以及图像块之间纹理细节的相似性,从而导致滤波后图像结构和边缘的失真。信息丢失。为了解决这个问题,作者使用图像中像素的空间位置来改善欧几里得距离。同时,使用结构相似指数测量(SSIM)来测量邻域图像块的相似度以获得相似度权重,使用该权重,再次对图像块的欧几里得距离进行加权,以减小图像块的权重结构相似性低。同时,增加了结构相似度高的图像块的权重,以达到保持边缘信息的能力。实验结果表明,该算法有效地保持了图像的边缘和细节,并且在PSNR和SSIM指标上优于传统的NLM算法。

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