Modified Local Updates of the Ant Colony Optimization Algorithm for Image Edge Detection

David, Edy Victor Haryanto S, Febriana
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Abstract

Edge detection refers to the process of extracting edge information of an image. It is considered as a basic step used in the majority of image processing applications. The aim of this study was to modify local updates of pheromones. Therefore, the convergence of the Ant Colony Optimization (ACO) algorithm applied to image edge detection could be accelerated effectively. Such the algorithm is a metaheuristic method applying the ants as agents with their pheromone updates for an effective and efficient solution of search processes. Five ACO algorithms for edge detection, i.e., ACO, modified ACO, ACO with the Sobel operator, ACO with the Prewitt operator, and ACO with the Isotropic operator were in comparison. Nearly optimal solutions of several image datasets were discovered through examination of the number of ants and iterations. Additionally, calculation results of each image dataset and algorithm were compared. The evidence shows that solutions produced by all algorithms are equally good. For an image dataset with more ants, however, it is found that the modified ACO algorithm has the best solution in terms of time convergence. The study contribution is further next to adding the concept of improving edge detection in the image with the ant colony optimization algorithm. The implementation of the study carried out is to modify local updates which are functionally used for improving the edge detection dealt with by ants taking part in ACO.
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一种改进的局部更新蚁群算法用于图像边缘检测
边缘检测是指提取图像边缘信息的过程。它被认为是大多数图像处理应用中使用的基本步骤。本研究的目的是修改信息素的局部更新。因此,将蚁群算法应用于图像边缘检测可以有效地加快收敛速度。该算法是一种元启发式方法,将蚂蚁作为信息素更新的代理,以有效地解决搜索过程。比较了五种边缘检测的蚁群算法,即蚁群算法、改进蚁群算法、Sobel算子的蚁群算法、Prewitt算子的蚁群算法和各向同性算子的蚁群算法。通过对蚁数和迭代次数的考察,找到了若干图像数据集的近似最优解。并对各图像数据集和算法的计算结果进行了比较。证据表明,所有算法产生的解都同样好。然而,对于蚂蚁较多的图像数据集,改进的蚁群算法在时间收敛方面具有最佳解。该研究的贡献是进一步增加了用蚁群优化算法改进图像边缘检测的概念。所进行的研究的实施是修改局部更新,这些更新在功能上用于改进参与蚁群算法的蚂蚁处理的边缘检测。
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