基于图像处理的污水管道故障检测

M. Harshini, Jeethu Philip, I. Haritha, Shruti Patil
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引用次数: 2

摘要

本研究提出了一种检查污水管道状况的突破性方法。城市地下污水管道系统是公共基础设施的重要形式,因为它有助于确保安全的氛围。目前最常用的下水道监控系统之一是闭路电视监控系统,其监控性能较差。摄像机安装在管道的一侧或其他设备上,在管道内录制视频,并离线发送给工程师,以分类可能的故障。在开源计算机视觉库技术的帮助下,机器控制的内部结构发散位置的检测和测试是本项目的主题。机器控制检测技术包括RGB归一化、背景减除、Canny边缘检测、圆弧检测、高光轮廓、时间转换和圆形蒙版等步骤,其中包括将图像分割为数学选择和缺陷单元域。利用计算感知技术对区域单元管道内发现的缺陷进行识别和分类,有助于协调图像处理。检测方法快速、自动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sewage Pipeline Fault Detection using Image Processing
This research proposes a ground breaking method for examining the condition of sewage pipes. The underground sewage piping system in cities is a vital form of common infrastructure because it helps to ensure a safe atmosphere. One of the most commonly used sewer inspection process which uses CCTV systems, has a weak performance. A camera is installed on one side of the pipe or on some other unit, and video is recorded within the pipes and sent off-line to an engineer to classify possible faults. The machine-controlled detection and testing of the location of divergences within the internal structure is the subject of this project with the help of Open Source computer vision Library techniques. Many steps are used in the machine-controlled inspection technique, including normalize RGB, Background Subtraction, Canny edge detection, Arc Detect, contours High-light, time Convert, and circular Mask, which involves segmenting the image into Mathematical choices and the defected unit field. Recognizing and classifying defects found within the pipe of an area unit using computation perception techniques helped reconcile image processing. The method of detection is both fast and automatic.
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