Nie Fangyan, Liu Mengzhu, Zhang Pingfeng
Computer and Information Engineering College, Guizhou University of Commerce, Guiyang, 550014, China.
College of Marxism, Guizhou University of Commerce, Guiyang, 550014, China.
Sci Rep. 2024 Apr 1;14(1):7642. doi: 10.1038/s41598-024-58456-2.
Crack formation is a common phenomenon in engineering structures, which can cause serious damage to the safety and health of these structures. An important method of ensuring the safety and health of engineered structures is the prompt detection of cracks. Image threshold segmentation based on machine vision is a crucial technology for crack detection. Threshold segmentation can separate the crack area from the background, providing convenience for more accurate measurement and evaluation of the crack condition and location. The segmentation of cracks in complex scenes is a challenging task, and this goal can be achieved by means of multilevel thresholding. The arithmetic-geometric divergence combines the advantages of the arithmetic mean and the geometric mean in probability measures, enabling a more precise capture of the local features of an image in image processing. In this paper, a multilevel thresholding method for crack image segmentation based on the minimum arithmetic-geometric divergence is proposed. To address the issue of time complexity in multilevel thresholding, an enhanced particle swarm optimization algorithm with local stochastic perturbation is proposed. In crack detection, the thresholding criterion function based on the minimum arithmetic-geometric divergence can adaptively determine the thresholds according to the distribution characteristics of pixel values in the image. The proposed enhanced particle swarm optimization algorithm can increase the diversity of candidate solutions and enhance the global convergence performance of the algorithm. The proposed method for crack image segmentation is compared with seven state-of-the-art multilevel thresholding methods based on several metrics, including RMSE, PSNR, SSIM, FSIM, and computation time. The experimental results show that the proposed method outperforms several competing methods in terms of these metrics.
裂纹形成是工程结构中的常见现象,会对这些结构的安全与健康造成严重损害。确保工程结构安全与健康的一种重要方法是及时检测裂纹。基于机器视觉的图像阈值分割是裂纹检测的关键技术。阈值分割可将裂纹区域与背景分离,为更准确地测量和评估裂纹状况及位置提供便利。在复杂场景中分割裂纹是一项具有挑战性的任务,而通过多级阈值处理可实现这一目标。算术 - 几何散度在概率测度中结合了算术平均值和几何平均值的优点,能在图像处理中更精确地捕捉图像的局部特征。本文提出了一种基于最小算术 - 几何散度的裂纹图像多级阈值分割方法。为解决多级阈值处理中的时间复杂度问题,提出了一种具有局部随机扰动的增强粒子群优化算法。在裂纹检测中,基于最小算术 - 几何散度的阈值准则函数可根据图像中像素值的分布特征自适应地确定阈值。所提出的增强粒子群优化算法可增加候选解的多样性并提高算法的全局收敛性能。将所提出的裂纹图像分割方法与七种基于RMSE、PSNR、SSIM、FSIM和计算时间等指标的先进多级阈值分割方法进行了比较。实验结果表明,在所提出的这些指标方面,该方法优于几种竞争方法。