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An improved artificial bee colony algorithm based on mean best-guided approach for continuous optimization problems and real brain MRI images segmentation

机译:一种基于平均最佳导引方法的改进人工蜂群算法,用于连续优化问题和真实脑MRI图像分割

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摘要

The artificial bee colony (ABC) algorithm is a relatively new algorithm inspired by nature and has been shown to be efficient in contrast to other optimization algorithms. Nonetheless, ABC has some similar drawbacks to the optimization algorithms in terms of the unbalanced search behavior. The original ABC algorithm shows strong exploration capability with ineffective exploitation due to the unbalanced search model. In this paper, a new ABC algorithm called MeanABC is introduced to achieve the search behavior balance via a modified search equation based on the information of the mean of the previous best solutions. To evaluate the performance of the proposed algorithm, experiments were divided into two parts: First, the proposed algorithm was tested on a comprehensive set of 14 benchmark functions. The results show that the proposed MeanABC enhances the performance of the original ABC in terms of faster global convergence speed, solution quality, and better robustness when compared to other ABC variants. Secondly, the proposed algorithm was applied as a hybrid with the FCM algorithm as a segmentation technique to a set of 20 volumes of real brain MRI images with 20 images for each volume. All of these images have several characteristics, levels of difficulty, and cover different domains. The obtained results are promising, especially when the performance of the proposed algorithm was compared to other state-of-the-art segmentation techniques.
机译:人工蜂群 (ABC) 算法是一种受自然启发的相对较新的算法,与其他优化算法相比已被证明是有效的。尽管如此,ABC在搜索行为不平衡方面也存在一些与优化算法类似的缺点。原始ABC算法由于搜索模型不平衡,具有较强的探索能力,但利用效率低下。该文引入一种新的ABC算法MeanABC,基于先前最优解的均值信息,通过改进的搜索方程实现搜索行为平衡。为了评估所提算法的性能,实验分为两部分:首先,在14个基准函数上对所提算法进行了测试。结果表明,与其他ABC变体相比,所提出的MeanABC在更快的全局收敛速度、求解质量和更好的鲁棒性方面增强了原始ABC的性能。其次,将所提算法与FCM算法混合应用于一组20卷真实脑部MRI图像,每卷20张图像。所有这些图像都具有多个特征、难度级别,并涵盖不同的领域。所获得的结果是有希望的,特别是当将所提出的算法的性能与其他最先进的分割技术进行比较时。

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