Xiang Liang, Zhao Xiajie, Wang Jianfeng, Wang Bin
Department of Space and Culture Design Graduate School of Techno Design (TED), Kookmin University, Seoul 02707, Republic of Korea.
College of Design, Hanyang University, Ansan 15588, Republic of Korea.
Biomimetics (Basel). 2025 May 1;10(5):282. doi: 10.3390/biomimetics10050282.
Thresholding image segmentation aims to divide an image into a number of regions with different feature attributes in order to facilitate the extraction of image features in the context of image detection and pattern recognition. However, existing threshold image-segmentation methods suffer from the problem of easily falling into locally optimal thresholds, resulting in poor image segmentation. In order to improve the image-segmentation performance, this study proposes an enhanced Human Evolutionary Optimization Algorithm (HEOA), known as CLNBHEOA, which incorporates Otsu's method as an objective function to significantly improve the image-segmentation performance. In the CLNBHEOA, firstly, population diversity is enhanced using the Chebyshev-Tent chaotic mapping refraction opposites-based learning strategy. Secondly, an adaptive learning strategy is proposed which combines differential learning and adaptive factors to improve the ability of the algorithm to jump out of the locally optimum threshold. In addition, a nonlinear control factor is proposed to better balance the global exploration phase and the local exploitation phase of the algorithm. Finally, a three-point guidance strategy based on Bernstein polynomials is proposed which enhances the local exploitation ability of the algorithm and effectively improves the efficiency of optimal threshold search. Subsequently, the optimization performance of the CLNBHEOA was evaluated on the CEC2017 benchmark functions. Experiments demonstrated that the CLNBHEOA outperformed the comparison algorithms by over 90%, exhibiting higher optimization performance and search efficiency. Finally, the CLNBHEOA was applied to solve six multi-threshold image-segmentation problems. The experimental results indicated that the CLNBHEOA achieved a winning rate of over 95% in terms of fitness function value, peak signal-to-noise ratio (PSNR), structural similarity (SSIM) and feature similarity (FSIM), suggesting that it can be considered a promising approach for multi-threshold image segmentation.
阈值图像分割旨在将图像划分为具有不同特征属性的多个区域,以便于在图像检测和模式识别的背景下提取图像特征。然而,现有的阈值图像分割方法存在容易陷入局部最优阈值的问题,导致图像分割效果不佳。为了提高图像分割性能,本研究提出了一种增强的人类进化优化算法(HEOA),即CLNBHEOA,它将大津法作为目标函数,以显著提高图像分割性能。在CLNBHEOA中,首先,使用基于切比雪夫-帐篷混沌映射折射对立的学习策略增强种群多样性。其次,提出了一种自适应学习策略,该策略结合差分学习和自适应因子,以提高算法跳出局部最优阈值的能力。此外,提出了一个非线性控制因子,以更好地平衡算法的全局探索阶段和局部开发阶段。最后,提出了一种基于伯恩斯坦多项式的三点引导策略,该策略增强了算法的局部开发能力,有效提高了最优阈值搜索效率。随后,在CEC2017基准函数上评估了CLNBHEOA的优化性能。实验表明,CLNBHEOA的性能比比较算法高出90%以上,具有更高的优化性能和搜索效率。最后,将CLNBHEOA应用于解决六个多阈值图像分割问题。实验结果表明,CLNBHEOA在适应度函数值、峰值信噪比(PSNR)、结构相似性(SSIM)和特征相似性(FSIM)方面的胜率超过95%,表明它可以被认为是一种有前途的多阈值图像分割方法。