计算机视觉和物联网对管道检测的影响——综述

N. Mangayarkarasi, G. Raghuraman, S. Kavitha
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引用次数: 4

摘要

近年来,在世界范围内,交通正成为一种要求很高的交通方式。有各种各样的管道系统用来输送水、气和污水,到达该州的每个角落。不幸的是,由于在管道中发现的损坏,大多数这些资源仅在传输过程中丢失。多年来,计算机视觉和物联网(IoT)的出现增加了每个领域的自动化范围。受此影响,现有的检查系统正日益智能化。本文对现有的用于管道缺陷识别的技术进行了综述。它讨论了现有的图像处理技术用于检测管道中存在的缺陷,引用自各种论文。它还简要介绍了目前用于连续监测管道的各种传感器,从而描述了其优点和缺点。最后,概述了现有方法的局限性和该领域的研究范围。
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Influence of Computer Vision and IoT for Pipeline Inspection-A Review
In recent years transmission is becoming one of the demanding ways of mobility all over the world. There are various pipeline systems built to carry water, gas and sewage water to reach out every nook and corner of the state. Unfortunately most of these resources are lost during the transmission only, due to the damages found in the pipelines. The advent of Computer Vision and Internet of Things (IoT) over the years has increased the scope of automation in every field. Being influenced by that, the existing inspection systems are getting smarter day by day. This paper gives an overall view about the existing techniques used in identification of the defects occurring in the pipelines. It discusses about the existing image processing techniques used to detect the defects present in the pipelines as quoted from various papers. It also briefs about the various sensors that are being used in the current scenarios for the continuous monitoring of the pipelines thus describing its pros and cons. Finally, the limitations of the existing methods and the scope of research in this domain have been outlined.
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