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Bacterial foraging optimization algorithm with varying population for entropy maximization based image segmentation

机译:基于熵最大化图像分割的不同群体的细菌觅食优化算法

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In this paper, a new variant of bacterial foraging optimization (BFO) algorithm, called bacterial foraging with varying population (named CBFVPA) is proposed for bi-level thresholding based gray scale image segmentation. The work shows how CBFVPA can be effectively utilized for fuzzy entropy maximization and how it can improve upon the performance of classical BFO (named as CBFOA) utilized for solving similar problems. In contrast to CBFOA, where a fixed population of bacteria is utilized, the basic essence of CBFVPA is that the population size undergoes variation through the phases of chemotaxis, metabolism, elimination and quorum sensing, in each iteration. The proposed algorithm has been employed on several benchmark gray scale images and the segmentation performances are computed in terms of a popular performance index, called uniformity factor. The performances show that CBFVPA is able to provide an overall, superior performance compared to that of CBFOA.
机译:本文提出了一种新的细菌觅食优化(BFO)算法(BFO)算法,称为细菌觅食,具有不同群体(命名CBFVPA)的基于灰度图像分割。 该工作表明CBFVPA如何有效地用于模糊熵最大化以及如何改善用于解决类似问题的经典BFO(命名为CBFOA)的性能。 与CBFOA相比,在使用固定的细菌群体的情况下,CBFVPA的基本本质是通过每次迭代中的趋化性,代谢,消除和法定传感的阶段经历变异。 所提出的算法已经在几个基准灰度级图像上采用,并且在流行的性能指数方面计算分割性能,称为均匀性。 表演表明,与CBFOA相比,CBFVPA能够提供总体,优异的性能。

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