CLPSO-based Fuzzy Color Image Segmentation

A. Borji, M. Hamidi, A. Moghadam
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引用次数: 26

Abstract

A new method for color image segmentation using fuzzy logic is proposed in this paper. Our aim here is to automatically produce a fuzzy system for color classification and image segmentation with least number of rules and minimum error rate. Particle swarm optimization is a sub class of evolutionary algorithms that has been inspired from social behavior of fishes, bees, birds, etc, that live together in colonies. We use comprehensive learning particle swarm optimization (CLPSO) technique to find optimal fuzzy rules and membership functions because it discourages premature convergence. Here each particle of the swarm codes a set of fuzzy rules. During evolution, a population member tries to maximize a fitness criterion which is here high classification rate and small number of rules. Finally, particle with the highest fitness value is selected as the best set of fuzzy rules for image segmentation. Our results, using this method for soccer field image segmentation in Robocop contests shows 89% performance. Less computational load is needed when using this method compared with other methods like ANFIS, because it generates a smaller number of fuzzy rules. Large train dataset and its variety, makes the proposed method invariant to illumination noise.
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基于clpso的模糊彩色图像分割
提出了一种利用模糊逻辑进行彩色图像分割的新方法。我们的目标是自动生成一个规则数量最少、错误率最小的颜色分类和图像分割模糊系统。粒子群优化是进化算法的一个子类,它的灵感来自于鱼群、蜜蜂、鸟类等群居动物的社会行为。我们使用综合学习粒子群优化(CLPSO)技术来寻找最优的模糊规则和隶属函数,因为它可以防止过早收敛。在这里,蜂群中的每个粒子都编码了一组模糊规则。在进化过程中,种群成员试图最大化适合度标准,即高分类率和少规则。最后,选取适应度值最高的粒子作为图像分割的最佳模糊规则集。我们的研究结果表明,将该方法用于机械战警比赛中的足球场图像分割,其分割效果达到89%。与ANFIS等方法相比,该方法生成的模糊规则数量更少,计算量更小。庞大的训练数据集及其多样性使得该方法对光照噪声具有不变性。
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