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Proceedings ArticleDOI

Automated assessment of buried pipeline defects by image processing

Wu Xue-Fei, +1 more
- Vol. 4, pp 583-587
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TLDR
The experimental results proved that the proposed defect feature extracting method under HSV color space is feasible and effective to apply in feature extraction of pipe defects of the underground water-pipelines.
Abstract
Many underground water pipelines are old and approaching their service lives in a great number of cities. With the promotion of sustaining buried infrastructure, it's necessary to pay much attention on how to effectively extract defect characteristics of damaged pipelines. Detection of defects in underground pipes is a crucial step to assess the deterioration degree of pipeline for municipal operators. Based on the image processing theory, a defect feature extracting method under HSV color space is proposed in this paper. QFCM (Quick Fuzzy C-Mean clustering) segmentation arithmetic is applied to extract characteristics parameters. The proposed algorithm can identify defects from background, and the types of defects in the buried pipes can be categorized in the estimation stage. Then, different methodologies of parameters extraction are applied in different types of pipe defects, features like area, angle, length and width of defects can also be calculated. And then, a method of assessing the accuracy of feature extraction algorithm is discussed. Finally, the proposed detection approach has been experimentally tested using a group of images acquired by CCD camera from real inspection scenarios. The experimental results proved that it is feasible and effective to apply the system in feature extraction of pipe defects of the underground water-pipelines.

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Citations
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Automated Assessment Tool for the Depth of Pipe Deterioration.

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Determination of Additional Aperture in Non-Metal Sewer Pipes by Image Processing

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References
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Journal ArticleDOI

A robust approach for automatic detection and segmentation of cracks in underground pipeline images

TL;DR: The proposed method is based on mathematical morphology and curvature evaluation that detects crack-like patterns in a noisy environment and statistically evaluates its accuracy and robustness with respect to varying pipe background color, crack geometries and background noise.
Journal ArticleDOI

Automated Pipe Defect Detection and Categorization Using Camera/Laser-Based Profiler and Artificial Neural Network

TL;DR: This research shows that positional as well as intensity information, related to potential defects, can be extracted from the acquired laser projections, and describes novel strategies created for the automation of defect classification in tubular structures.
Journal ArticleDOI

Condition assessment of underground sewer pipes using a modified digital image processing paradigm

TL;DR: A system for the application of computer vision techniques to the automatic assessment of the structural condition of underground sewer pipes that overcomes the inherent limitations of existing digitizing paradigms is presented.
Proceedings ArticleDOI

Automated Defect Detection in Urban Wastewater Pipes Using Invariant Features Found in Video Images

TL;DR: In this article, an automated three-step approach using local scale-orientation-illumination invariant features to detect surface defects and critical patterns from inspection imagery of wastewater pipelines is presented.
Proceedings ArticleDOI

Automated Assessment Tool for the Depth of Pipe Deterioration

TL;DR: In this article, the authors proposed to use segmentation and feature extraction using structural elements to find the dimensions of the defect such as the length, width and depth and also the type of defect.
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