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Salt-and-pepper noise removal using modified mean filter and total variation minimization

机译:使用改进的均值滤波器去除椒盐噪声并最大程度减少总变化

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摘要

The search for effective noise removal algorithms is still a real challenge in the field of image processing. An efficient image denoising method is proposed for images that are corrupted by salt-and-pepper noise. Salt-and-pepper noise takes either the minimum or maximum intensity, so the proposed method restores the image by processing the pixels whose values are either 0 or 255 (assuming an 8-bit/pixel image). For low levels of noise corruption (less than or equal to 50% noise density), the method employs the modified mean filter (MMF), while for heavy noise corruption, noisy pixels values are replaced by the weighted average of the MMF and the total variation of corrupted pixels, which is minimized using convex optimization. Two fuzzy systems are used to determine the weights for taking average. To evaluate the performance of the algorithm, several test images with different noise levels are restored, and the results are quantitatively measured by peak signal-to-noise ratio and mean absolute error. The results show that the proposed scheme gives considerable noise suppression up to a noise density of 90%, while almost completely maintaining edges and fine details of the original image. (c) 2018 SPIE and IS&T%013002.1-013002.8
机译:在图像处理领域中,寻找有效的噪声去除算法仍然是真正的挑战。针对盐和胡椒粉噪声破坏的图像,提出了一种有效的图像去噪方法。椒盐噪声的强度为最小值或最大值,因此,该方法通过处理值为0或255的像素(假定为8位/像素图像)来恢复图像。对于低水平的噪声破坏(小于或等于50%的噪声密度),该方法采用改进的均值滤波器(MMF),而对于严重的噪声破坏,将噪声像素值替换为MMF和总和的加权平均值。损坏像素的变化,可通过凸优化将其最小化。使用两个模糊系统确定求平均值的权重。为了评估该算法的性能,恢复了具有不同噪声水平的几张测试图像,并通过峰值信噪比和平均绝对误差对结果进行了定量测量。结果表明,所提出的方案在噪声密度高达90%的情况下具有相当大的噪声抑制能力,同时几乎完全保留了原始图像的边缘和精细细节。 (c)2018 SPIE和IS&T%013002.1-013002.8

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