Image segmentation using an emergent complex system: Cellular automata

Djemame Safia, B. Chawki
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引用次数: 2

Abstract

Cellular automata are simple models of computation which exhibit fascinatingly complex behavior. They have captured the attention of several generations of researchers, leading to an extensive body of work. The emphasis is mainly on topics closer to computer science and mathematics rather than physics, biology or other applications. Many related works were interested in cellular automata capacities in image processing, but all of them were confronted with the problem of increase of rules number towards the number of cells states. In this paper, we propose an original solution to avoid this problem, the objective is a segmentation by edge detection, applied to binary images, grey level images and real images. Comparisons are made with standard edge detector (Canny) and algorithms based on cellular automata. Obtained results are encouraging.
使用一个新兴的复杂系统:元胞自动机的图像分割
元胞自动机是一种简单的计算模型,但却表现出令人着迷的复杂行为。它们吸引了几代研究人员的注意,导致了大量的工作。重点主要放在更接近计算机科学和数学的主题上,而不是物理、生物或其他应用。许多相关研究都对元胞自动机在图像处理中的能力感兴趣,但都面临着随着元胞状态数的增加而增加规则数量的问题。在本文中,我们提出了一种新颖的解决方案来避免这一问题,目标是通过边缘检测进行分割,应用于二值图像、灰度图像和真实图像。与标准边缘检测器(Canny)和基于元胞自动机的算法进行了比较。取得的结果令人鼓舞。
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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