亚像素渲染
情态动词
流离失所(心理学)
鉴定(生物学)
计算机视觉
计算机科学
人工智能
位移法
模态分析
结构工程
像素
工程类
有限元法
材料科学
高分子化学
心理学
植物
心理治疗师
生物
作者
Tao Liu,Yu Lei,Yibing Mao
摘要
In conventional structural health monitoring (SHM), the installation of sensors and data acquisition devices will affect the regular operation of structures to a certain extent and is also expensive. In order to overcome these shortcomings, the computer vision‐ (CV‐) based method has been introduced into SHM, and its practical applications are increasing. In this paper, CV‐based SHM methods such as template matching and Hough circle transform are described. In order to improve the accuracy of pixel localization, the subpixel localization refinement method is introduced. The displacement monitoring experiment of an aluminum alloy cantilever with three targets is conducted by using the two CV‐based SHM methods and the laser displacement sensors simultaneously. The displacement monitoring results of CV‐based methods agree well with those measured by the laser transducer system in the time domain. After that, the first two modes of the cantilever are identified from the monitoring results. In addition, the experimental modes identified from the monitoring data and those calculated from the finite element model are also consistent. Therefore, the developed CV‐based methods can obtain accurate displacement results in both time and frequency domains, which could be applied to complex structures with more monitoring targets.
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