Sewer Pipeline Fault Identification Using Anomaly Detection Algorithms.
Abstract:
Most existing sewer pipeline condition assessment methods determine the presence and types of faults via examination of videos, which is a time-consuming and labor-intens...Show MoreMetadata
Abstract:
Most existing sewer pipeline condition assessment methods determine the presence and types of faults via examination of videos, which is a time-consuming and labor-intensive process. A few automatic methods based on image processing techniques can be used to detect specific faults. However, these methods have limitations due to the presence of unpredictable sewer pipeline fault patterns. Deep learning methods have also been applied to sewer pipeline fault detection. However, these methods require a large amount of annotated data to obtain reliable results. In this paper, we propose a fault detection method that applies unsupervised machine learning based anomaly detection algorithms with feature extraction to videos recorded by new sewer pipeline visual inspection equipment. The recorded videos are regarded as sequence signals, which are converted into feature vectors, followed by application of an anomaly detection algorithm. Unlike existing methods, the proposed method is computationally efficient as it does not require an annotated fault sample database for training fault detection models. We evaluate various anomaly detection algorithms and feature combinations on real sewer pipeline data collected in Shenzhen, with an overall accuracy result of above 90%. The proposed method provides a new and fast technique for surveying urban sewer pipelines, and to facilitate further research in this area, we have made the code and data used in this paper publicly available.
Sewer Pipeline Fault Identification Using Anomaly Detection Algorithms.
Published in: IEEE Access ( Volume: 8)
Funding Agency:
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- IEEE Keywords
- Index Terms
- Anomaly Detection ,
- Video Sequences ,
- Anomaly Detection Algorithm ,
- Sewer Pipelines ,
- Pipeline Fault ,
- Area Of Research ,
- Image Processing ,
- Combination Of Features ,
- Unsupervised Learning ,
- Types Of Defects ,
- Image Processing Techniques ,
- Fault Samples ,
- Fault Detection Method ,
- Convolutional Neural Network ,
- Support Vector Machine ,
- Supervised Learning ,
- Performance Of Algorithm ,
- Computer Vision ,
- Real Scenarios ,
- Precision And Recall ,
- Gabor Features ,
- Gray Level Co-occurrence Matrix ,
- Histogram Of Oriented Gradients ,
- Different Types Of Defects ,
- Anomaly Detection Methods ,
- Local Binary Pattern Features ,
- Video Data ,
- Underground Environment ,
- Abnormal Signaling ,
- Gabor Filters
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Anomaly Detection ,
- Video Sequences ,
- Anomaly Detection Algorithm ,
- Sewer Pipelines ,
- Pipeline Fault ,
- Area Of Research ,
- Image Processing ,
- Combination Of Features ,
- Unsupervised Learning ,
- Types Of Defects ,
- Image Processing Techniques ,
- Fault Samples ,
- Fault Detection Method ,
- Convolutional Neural Network ,
- Support Vector Machine ,
- Supervised Learning ,
- Performance Of Algorithm ,
- Computer Vision ,
- Real Scenarios ,
- Precision And Recall ,
- Gabor Features ,
- Gray Level Co-occurrence Matrix ,
- Histogram Of Oriented Gradients ,
- Different Types Of Defects ,
- Anomaly Detection Methods ,
- Local Binary Pattern Features ,
- Video Data ,
- Underground Environment ,
- Abnormal Signaling ,
- Gabor Filters
- Author Keywords