Applying generalized weighted mean aggregation to impulsive noise removal of images

Kuan-Lin Chen, J. Chang
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引用次数: 1

Abstract

In this paper, we apply generalized weighted mean to construct interval-valued fuzzy relations for grayscale image impulse noise detection and correction. First, we employ two weighting parameters and perform the weighted mean aggregation for the central pixel and its eight neighbor pixels in a 3×3 sliding window across the image. Then, to counter the over-weighting of a big difference term, we apply a saturation threshold transfer function to these eight pixel difference values. Finally, the image noise map is obtained through a threshold operation on the cumulative differences. To decrease the noise detection error, weighting parameters of the mean can be learned by the gradient method caste in discrete formulation. Moreover, to get higher PSNR in the corrected image, we have experienced from the training that we will select weight of 20 for noise rate smaller than 20% and 50 for noise rate greater than 20%, on erroneous noisy than that on the erroneous non-noise pixel. By the experiment, we have shown that the integration of interval-valued fuzzy relations with the weighted mean aggregation algorithm can effectively detect the image noise pixels and then correct them thereafter.
应用广义加权平均聚集法去除图像脉冲噪声
本文应用广义加权均值构造区间值模糊关系,用于灰度图像脉冲噪声的检测和校正。首先,我们采用两个加权参数,并在横跨图像的3×3滑动窗口中对中心像素及其八个相邻像素执行加权平均聚合。然后,为了抵消大差分项的过度加权,我们对这8个像素差分值应用了饱和度阈值传递函数。最后,对累积差值进行阈值运算,得到图像噪声映射。为了减小噪声检测误差,可以采用离散公式中的梯度法学习均值的加权参数。而且,为了在校正后的图像中获得更高的PSNR,我们从训练中体会到,对于噪声率小于20%的图像,我们会选择20的权重,对于噪声率大于20%的图像,我们会选择50的权重,错误噪声比错误非噪声像素的权重大。实验表明,将区间模糊关系与加权均值聚合算法相结合,可以有效地检测出图像中的噪声像素点,并进行校正。
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