用于全局优化和多级阈值分割的改进型蜜獾算法:脑肿瘤图像的实际案例

Essam H. Houssein, Marwa M. Emam, Narinder Singh, Nagwan Abdel Samee, Maali Alabdulhafith, Emre Çelik
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摘要

全局优化和生物医学图像分割在各种科学和医学领域都至关重要。蜜獾算法(HBA)是从蜜獾的觅食行为中汲取灵感而新开发的元启发式算法。与其他元启发式算法类似,蜜獾算法在利用、陷入局部最优以及收敛速度等方面也遇到了困难。本研究旨在通过实施增强解质量(ESQ)方法来提高原始 HBA 的性能。这一策略有助于防止陷入局部最优状态,并加快收敛过程。我们利用 IEEE CEC'2020 的一系列基准函数对增强算法 mHBA 进行了评估。在评估中,我们将 mHBA 与成熟的元启发式算法进行了比较。mHBA 在定性和定量评估中都表现出了卓越的性能。我们的研究不仅关注全局优化,而且还调查了生物医学图像分割领域,这是涉及数字图像分析和理解的众多应用中的一个关键过程。我们特别关注用于医学图像分割的多级阈值(MT)问题,这是一个困难的过程,随着所需的阈值数量的增加而变得更具挑战性。为了解决这个问题,我们提出了一种利用 ESQ 方法的标准 HBA 修订版,即 mHBA。我们将这种方法用于磁共振成像(MRI)的分割。对 mHBA 的评估利用现有指标来衡量其分割的质量和性能。与许多成熟的优化算法相比,该评估展示了 mHBA 的适应能力,强调了所建议技术的有效性。
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An improved honey badger algorithm for global optimization and multilevel thresholding segmentation: real case with brain tumor images

Global optimization and biomedical image segmentation are crucial in diverse scientific and medical fields. The Honey Badger Algorithm (HBA) is a newly developed metaheuristic that draws inspiration from the foraging behavior of honey badgers. Similar to other metaheuristic algorithms, HBA encounters difficulties associated with exploitation, being trapped in local optima, and the pace at which it converges. This study aims to improve the performance of the original HBA by implementing the Enhanced Solution Quality (ESQ) method. This strategy helps to prevent becoming stuck in local optima and speeds up the convergence process. We conducted an assessment of the enhanced algorithm, mHBA, by utilizing a comprehensive collection of benchmark functions from IEEE CEC’2020. In this evaluation, we compared mHBA with well-established metaheuristic algorithms. mHBA demonstrates exceptional performance, as shown by both qualitative and quantitative assessments. Our study not only focuses on global optimization but also investigates the field of biomedical image segmentation, which is a crucial process in numerous applications involving digital image analysis and comprehension. We specifically focus on the problem of multi-level thresholding (MT) for medical image segmentation, which is a difficult process that becomes more challenging as the number of thresholds needed increases. In order to tackle this issue, we suggest a revised edition of the standard HBA, known as mHBA, which utilizes the ESQ approach. We utilized this methodology for the segmentation of Magnetic Resonance Images (MRI). The evaluation of mHBA utilizes existing metrics to gauge the quality and performance of its segmentation. This evaluation showcases the resilience of mHBA in comparison to many established optimization algorithms, emphasizing the effectiveness of the suggested technique.

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