基于部分卷积图像恢复的增强视觉管道缺陷检测

Mingcun Liu, Ce Li, Rui Yan, Yunzhi Xu, Jingyi Qiao, Feng Yang
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引用次数: 0

摘要

在城市建设中,排水管道的缺陷检测和修复工作非常重要,管道内表面的视觉缺陷检测已成为计算机视觉和管道机器人应用中的一个热点研究问题。然而,由于视频质量不高和机器人型号不同的限制,自动检测缺陷仍然很困难。目前,大多数管道检测方法都是通过配备高清摄像机的管道机器人和人工识别来逐帧发现缺陷。针对这些问题,本文提出了一种基于图像恢复增强的管道缺陷视觉检测方法。其中,首先提出了利用局部卷积的图像恢复方法对被牵引绳局部遮挡的图像进行损伤处理,然后提出了利用增强图像数据对管道缺陷进行快速检测的方法。通过分析修复对缺陷检测的影响,实验结果表明,我们的方法通过部分图像修复可以显著提高检测性能,是一种适用于管道机器人的有效方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced Visual Pipeline Defect Detection Using Partial Convolution Image Restoration
In urban construction, the defect detection and repair work of drainage pipe-lines are very important, and visual defect detection on pipeline inner surface has become a hot research issue in the application of computer vision and pipeline robot. However, it is still difficult to detect the defects automatically because it is limited by low-quality video and different models of robots. At present, most pipeline detection methods are implemented by pipeline robots equipped with high-definition cameras and manual recognition to find defects frame by frame. To cope with these issues, this paper proposes a method of visual pipeline defect detection enhanced by image restoration. In which, the image restoration using partial convolution is firstly proposed to impair the image that is locally occluded by the haulage rope, then the fast detection using enhanced image data is proposed for pipeline defects. By analyzing the influence of the restoration on the defect detection, the experiment results show that our method has produced significantly improved detection performance by the partial image restoration and it is an efficient method for the application of pipeline robot.
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