This paper proposes a pipeline to automatically track and measure displacement and vibration of structural specimens during laboratory experiments. The latest Mask Regional Convolutional Neural Network (Mask R-CNN) can locate the targets and monitor their movement from videos recorded by a stationary camera. To improve precision and remove the noise, techniques such as Scale-invariant Feature Transform (SIFT) and various filters for signal processing are included. Experiments on three small-scale reinforced concrete beams and a shaking table test are utilized to verify the proposed method. Results show that the proposed deep learning method can achieve the goal to automatically and precisely measure the motion of tested structural members during laboratory experiments.
翻译:本文件建议建立一个管道,自动跟踪和测量实验室实验期间结构标本的变位和振动情况,最新的Mask区域演变神经网络(Mask R-CNN)可以定位目标,从固定相机录制的录像中监测其动向,为了提高精确度和清除噪音,包括了规模变化地貌变异等技术以及信号处理的各种过滤器,利用了三个小规模强化混凝土束的实验和摇晃表测试来核实拟议方法,结果显示,拟议的深层学习方法可以实现在实验室实验期间自动和准确地测量测试过的结构成员运动的目标。