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Hybrid Artificial Root Foraging Optimizer Based Multilevel Threshold for Image Segmentation

机译:混合人工根觅食优化器基于图像分割的多级阈值

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摘要

This paper proposes a new plant-inspired optimization algorithm for multilevel threshold image segmentation, namely, hybrid artificial root foraging optimizer (HARFO), which essentially mimics the iterative root foraging behaviors. In this algorithm the new growth operators of branching, regrowing, and shrinkage are initially designed to optimize continuous space search by combining root-to-root communication and coevolution mechanism. With the auxin-regulated scheme, various root growth operators are guided systematically. With root-to-root communication, individuals exchange information in different efficient topologies, which essentially improve the exploration ability. With coevolution mechanism, the hierarchical spatial population driven by evolutionary pressure of multiple subpopulations is structured, which ensure that the diversity of root population is well maintained. The comparative results on a suit of benchmarks show the superiority of the proposed algorithm. Finally, the proposed HARFO algorithm is applied to handle the complex image segmentation problem based on multilevel threshold. Computational results of this approach on a set of tested images show the outperformance of the proposed algorithm in terms of optimization accuracy computation efficiency.
机译:本文提出了一种新的多级阈值图像分割的植物启发优化算法,即混合人工根觅食优化器(Harfo),其基本上模仿迭代根觅食行为。在该算法中,分支,重新发射和收缩的新增长运算符最初是为了通过组合根到根部通信和共乐机构来优化连续空间搜索。利用制冷调节方案,各种根生长算子系统地被系统地引​​导。通过根到根部通信,个人在不同有效拓扑中交换信息,从而基本上提高了勘探能力。利用群体机制,由多个亚步骤的进化压力驱动的分层空间群是结构化的,这确保了根部种群的多样性保持良好。基准套装上的比较结果显示了所提出的算法的优越性。最后,基于多级阈值来应用所提出的Harfo算法来处理复杂图像分割问题。在一组测试图像上的这种方法的计算结果显示了所提出的算法在优化精度计算效率方面的表现。

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