Defect Identification and Measurement using Stereo Vision Camera for In-Line Inspection of Pipeline

A. S. Saragih, Fernaldy Aditya, Waleed Ahmed
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引用次数: 1

Abstract

In its operation, pipelines encounter a variety of damages, from improper application and unfavorable environmental conditions, which causes defects like metal loss, corrosion, cracks, among others. Along with the growing use of mobile robotic systems for pipelines inspection, we proposed a stereo camera-based monitoring system that can scan, detect, locate, and measure internal defects, particularly on cracks and leakage. To achieve autonomy, the system utilizes a stereo camera to extract 3D information, while a deep learning algorithm, namely Convolutional Neural Network (CNN), is used to identify the defect classes. The result demonstrates the generation of 3D point clouds, classification, and defect quantification. This paper aims to cover the device specification, control solution, system performance, as well as current drawbacks and enhancement approaches.
基于立体视觉相机的管道在线检测缺陷识别与测量
管道在运行过程中,由于使用不当和环境条件恶劣,会造成各种各样的损坏,造成金属丢失、腐蚀、裂纹等缺陷。随着移动机器人系统越来越多地用于管道检查,我们提出了一种基于立体摄像机的监测系统,可以扫描、检测、定位和测量内部缺陷,特别是裂缝和泄漏。为了实现自主性,系统利用立体摄像头提取三维信息,同时使用深度学习算法卷积神经网络(CNN)识别缺陷类别。结果演示了三维点云的生成、分类和缺陷量化。本文旨在涵盖设备规格,控制方案,系统性能,以及目前的缺点和改进方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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