A New Efficient Algorithm to Remove High Density Gaussian Noise with Edge Preservation

V. R. Vijaykumar, P. Vanathi, P. Kanagasabapathy, B. Senthilkumar
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引用次数: 1

Abstract

In this paper a new algorithm is proposed to remove Gaussian noise with edge preservation. The function of the proposed algorithm is to first find the pixel values along the boundary of the filtering window and then calculate its variance. If this variance is less than a threshold specified, then the corrupted pixel is replaced by the mean of the inside pixels from the filtering window after sorting and trimming. Experimental results shows that the proposed algorithm outperforms with significant improvement in image quality than the arithmetic mean, alpha-trimmed mean filter, wiener filter, K-means filter and adaptive window based method. The proposed method removes the Gaussian noise very effectively even at a noise variance as high as 40 with edge preservation.
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一种基于边缘保持的高密度高斯噪声去除新算法
本文提出了一种基于边缘保持的高斯噪声去除算法。该算法的功能是首先沿滤波窗口的边界找到像素值,然后计算其方差。如果该方差小于指定的阈值,则在排序和修剪后,由过滤窗口中的内部像素的平均值替换损坏的像素。实验结果表明,该算法的图像质量优于算术均值、alpha裁剪均值滤波、维纳滤波、k均值滤波和基于自适应窗口的方法。该方法在噪声方差高达40的情况下也能有效地去除高斯噪声。
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