Training cellular automata for salt and pepper noise filtering

A. P. Shukla, S. Agarwal
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引用次数: 2

Abstract

Cellular Automata is significantly applying to image processing operations. The description about the use of training of cellular automata for filtering the salt and pepper noise in binary images is exemplified in this paper. The selection of the best rule set from large search space has been performed on the basis of sequential floating forward search method. The peak signal to noise ratio values between original and filtered image is used as the objective function. The proposed method is also compared with some standard methods and found to perform better in respect to restoration of the image.
训练用于椒盐噪声滤波的元胞自动机
元胞自动机在图像处理操作中有着重要的应用。本文举例说明了如何利用元胞自动机的训练来过滤二值图像中的椒盐噪声。在序贯浮动前向搜索方法的基础上,从大搜索空间中选择最优规则集。将原始图像与滤波后图像的峰值信噪比作为目标函数。并与一些标准方法进行了比较,发现该方法在图像恢复方面表现更好。
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