作者
Evan McLaughlin, Nicholas Charron, Sriram Narasimhan
发表日期
2020/9/1
期刊
Journal of Computing in Civil Engineering
卷号
34
期号
5
页码范围
04020029
出版商
American Society of Civil Engineers
简介
This work presents a process for automated end-to-end inspection of area defects—specifically spalls and delaminations—in RC bridges. The process uses a mobile robotic platform to collect three-dimensional (3D) spatial data via lidar, and visual defect data via visible and infrared spectrum cameras. A convolutional neural network (CNN) is implemented to automatically make pixelwise predictions about the presence of defects in the images. Simultaneous localization and mapping is employed to fuse 3D lidar data with labeled images to generate a colorized and semantically labeled 3D map of a structure. Using this 3D map, a procedure was developed to automatically quantify the delamination and spall areas. This procedure was validated on a concrete bridge, and results showed that the automated defect quantification inspection process is feasible to detect and quantify both spalls and delaminations. Error …
引用总数
20202021202220232024211251916
学术搜索中的文章
E McLaughlin, N Charron, S Narasimhan - Journal of Computing in Civil Engineering, 2020