Mutual-inclusive learning-based multi-swarm PSO algorithm for image segmentation using an innovative objective function

Rupak Chakraborty, R. Sushil, M. L. Garg
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引用次数: 4

Abstract

This paper presents a novel image segmentation algorithm formed by the normalised index value (Niv) and probability (Pr) of pixel intensities. To reduce the computational complexity, a mutual-inclusive learning-based optimisation strategy, named mutual-inclusive multi-swarm particle swarm optimisation (MIMPSO) is also proposed. In mutual learning, a high dimensional problem of particle swarm optimisation (PSO) is divided into several one-dimensional problems to get rid of the 'high dimensionality' problem whereas premature convergence is removed by the inclusive-learning approach. The proposed Niv and Pr-based technique with the MIMPSO algorithm is applied on the Berkley Dataset (BSDS300) images which produce better optimal thresholds at a faster convergence rate with high functional values as compared to the considered optimisation techniques like PSO, genetic algorithm (GA) and artificial bee colony (ABC). The overall performance in terms of the fidelity parameters of the proposed algorithm is carried out over the other stated global optimisers.
基于互包容学习的多群粒子群算法的目标函数分割
本文提出了一种由像素强度的归一化指标值(Niv)和概率(Pr)组成的图像分割算法。为了降低计算复杂度,提出了一种基于互包容学习的优化策略——互包容多群粒子群优化(MIMPSO)。在相互学习中,粒子群优化(PSO)的高维问题被分解为几个一维问题,以摆脱“高维”问题,而包含学习方法则消除了过早收敛。与PSO、遗传算法(GA)和人工蜂群(ABC)等优化技术相比,提出的基于Niv和pr的MIMPSO算法技术应用于伯克利数据集(BSDS300)图像,以更快的收敛速度和高功能值产生更好的最佳阈值。在保真度参数方面,所提出的算法的整体性能优于其他声明的全局优化器。
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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