Segmentation for path analysis based on OTSU and immune genetic algoritnm

Hua Han, Yuming Wang, Yipingchen, Zhen Huang, Yifan Hu
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引用次数: 2

Abstract

In this paper, we firstly introduce the path analysis of tracking robot, and then introduce the advantages of immune genetic algorithm (IGA). Thirdly, we combine immune genetic algorithm and OTSU threshold method to segment path of tracking robot. Because of the nonlinear solving process of immune genetic algorithm, for each chromosome, the solution of fitness function is separated. And the genetic algorithm is independent of each other, which is suitable for parallel computing and satisfy real time requirements. So OTSU combined with immune genetic algorithm not only improve the segmentation performance, but also enhance the computing speed of the algorithm. At last, the experiment results demonstrate the effectiveness of the algorithm.
基于OTSU和免疫遗传算法的路径分析分割
本文首先介绍了跟踪机器人的路径分析,然后介绍了免疫遗传算法(IGA)的优点。第三,结合免疫遗传算法和OTSU阈值法对跟踪机器人进行路径分割。由于免疫遗传算法的求解过程是非线性的,对于每条染色体,适应度函数的解是分离的。遗传算法相互独立,适合并行计算,满足实时性要求。因此,OTSU与免疫遗传算法的结合不仅提高了分割性能,而且提高了算法的计算速度。最后,通过实验验证了该算法的有效性。
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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