Peng Zhangjun, Li Li, Liu Daoguang, Zhou Shuai, Liu Zhigui
School of Information Engineering, Southwest University of Science and Technology, Mianyang 621010, China.
School of Computer Science and Technology, Southwest University of Science and Technology, Mianyang 621010, China.
Sensors (Basel). 2024 Aug 14;24(16):5246. doi: 10.3390/s24165246.
There are many high dam hubs in the world, and the regular inspection of high dams is a critical task for ensuring their safe operation. Traditional manual inspection methods pose challenges related to the complexity of the on-site environment, the heavy inspection workload, and the difficulty in manually observing inspection points, which often result in low efficiency and errors related to the influence of subjective factors. Therefore, the introduction of intelligent inspection technology in this context is urgently necessary. With the development of UAVs, computer vision, artificial intelligence, and other technologies, the intelligent inspection of high dams based on visual perception has become possible, and related research has received extensive attention. This article summarizes the contents of high dam safety inspections and reviews recent studies on visual perception techniques in the context of intelligent inspections. First, this article categorizes image enhancement methods into those based on histogram equalization, Retinex, and deep learning. Representative methods and their characteristics are elaborated for each category, and the associated development trends are analyzed. Second, this article systematically enumerates the principal achievements of defect and obstacle perception methods, focusing on those based on traditional image processing and machine learning approaches, and outlines the main techniques and characteristics. Additionally, this article analyzes the principal methods for damage quantification based on visual perception. Finally, the major issues related to applying visual perception techniques for the intelligent safety inspection of high dams are summarized and future research directions are proposed.
世界上有许多高坝枢纽,对高坝进行定期检查是确保其安全运行的一项关键任务。传统的人工检查方法面临着现场环境复杂、检查工作量大以及人工观察检查点困难等挑战,这常常导致效率低下以及受主观因素影响出现误差。因此,在这种情况下引入智能检查技术迫在眉睫。随着无人机、计算机视觉、人工智能等技术的发展,基于视觉感知的高坝智能检查成为可能,相关研究受到广泛关注。本文总结了高坝安全检查的内容,并回顾了智能检查背景下视觉感知技术的近期研究。首先,本文将图像增强方法分为基于直方图均衡化、Retinex和深度学习的方法。对每一类的代表性方法及其特点进行了阐述,并分析了相关的发展趋势。其次,本文系统地列举了缺陷和障碍物感知方法的主要成果,重点介绍了基于传统图像处理和机器学习方法的成果,并概述了主要技术和特点。此外,本文分析了基于视觉感知的损伤量化主要方法。最后,总结了将视觉感知技术应用于高坝智能安全检查的主要问题,并提出了未来的研究方向。