Martial Art Learning Optimization: A Novel Metaheuristic Algorithm for Night Image Enhancement

Jeng-Shyang Pan Jeng-Shyang Pan, Ling Li Jeng-Shyang Pan, Shu-Chuan Chu Ling Li, Kuo-Kun Tseng Shu-Chuan Chu, Hisham A. Shehadeh Kuo-Kun Tseng
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Abstract

This paper proposes a human behavior-based optimization algorithm, Martial Arts Learning Optimization (MALO), for optimization problems in continuous spaces. The algorithm simulates the process of characters in martial arts learning so as to apply it to optimization problems. Characters in martial arts stories usually go through multiple stages of learning martial arts, such as self-study and leader teaching. Multiple learning stages of characters are modeled in this paper, utilizing the wisdom of the characters learning martial arts in the novel, enabling the optimization process. To verify and analyze the performance of the proposed algorithm, the algorithm is numerically tested on 30 benchmark functions, and it is found that its performance was better than the state-of-the-art nine algorithms. In addition, the algorithm is also used to solve the problem of nighttime image brightness enhancement. Compared with other image enhancement methods, the proposed MALO algorithm has superior results in both visual effects and quantitative image quality assessments.
武术学习优化:用于夜间图像增强的新型元搜索算法
本文针对连续空间中的优化问题,提出了一种基于人类行为的优化算法--武术学习优化(MALO)。该算法模拟武侠小说中人物的习武过程,从而将其应用于优化问题。武侠小说中的人物通常会经历自学和领教等多个学武阶段。本文利用小说中人物学习武功的智慧,对人物的多个学习阶段进行建模,从而实现优化过程。为了验证和分析所提算法的性能,该算法在 30 个基准函数上进行了数值测试,发现其性能优于最先进的 9 种算法。此外,该算法还被用于解决夜间图像亮度增强问题。与其他图像增强方法相比,所提出的 MALO 算法在视觉效果和定量图像质量评估方面都具有更优越的效果。
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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