Particle Swarm Optimization of Cellular Automata Rules for Edge Detection

D. Dumitru, A. Andreica, L. Dioşan, Z. Bálint
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引用次数: 1

Abstract

Cellular automata have been widely used for solving the edge detection problem. This paper proposes an algorithm which optimizes cellular automata rules using Particle Swarm Optimization based on an existing method in the literature. Moreover, the method is extended from grayscale to colour images by performing the optimization on each colour channel individually. A discussion on choosing the proper fitness function as well as comparative results with respect to the state-of-the-art are presented. As our algorithm is comparable to the Canny and Sobel edge detectors, it could be used in image segmentation tasks as a subroutine for edge detection.
基于元胞自动机规则的粒子群算法边缘检测
元胞自动机已被广泛用于解决边缘检测问题。本文在已有文献的基础上,提出了一种基于粒子群算法的元胞自动机规则优化算法。此外,通过对每个颜色通道分别进行优化,将该方法从灰度图像扩展到彩色图像。讨论了如何选择合适的适应度函数,并给出了比较结果。由于我们的算法可与Canny和Sobel边缘检测器相媲美,因此它可以作为边缘检测的子程序用于图像分割任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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