Chapter
Jul 11, 2018
Pipelines 2018

Automated Sewer Pipeline Inspection Using Computer Vision Techniques

Publication: Pipelines 2018: Condition Assessment, Construction, and Rehabilitation

ABSTRACT

To facilitate condition assessment in sewer pipeline networks current practice is using the available technologies to visually inspect the internal condition of pipelines. Closed circuit television (CCTV) has been one of the most used methods in North American municipalities in last decades. However, this method requires hours of videos to be inspected by certified inspectors which is time consuming, labor intensive, and error prone. The main objective of this research is to propose an automated approach for inspection and condition assessment of sewer pipelines using computer vision techniques. This research includes two main part: identifying region of interest (ROI) in sewer inspection videos which are most likely to contain sewer defects, and defect detection and classification among the identified anomalous frames. The ROI detection model employs proportional data modeling using hidden Markov models (HMM) to extract abnormal frames from sewer CCTV videos. In the next step, a deep learning approach using convolutional neural networks (CNN) is proposed to detect the defects and classify them. The presented algorithm has been developed and tested using the data sets from CCTV inspection reports.

Get full access to this article

View all available purchase options and get full access to this chapter.

REFERENCES

Guo, W., Soibelman, L., and Garrett J. H. Jr., (2009). “Automated defect detection for sewer pipeline inspection and condition assessment.” Autom. Constr., 18(5), 587–596.
Halfawy, M., and Hengmeechai, J. (2015). “Integrated Vision-Based System for Automated Defect Detection in Sewer Closed Circuit Television Inspection Videos.” J. Comput. Civ. Eng., 29(1), 04014024.
Halfawy, M. R., and Hengmeechai, J. (2014). “Optical flow techniques for estimation of camera motion parameters in sewer closed circuit television inspection videos.” Automation in Construction, 38(Supplement C), 39–45.
Lawrence, S., Giles, C. L., Ah, C. T., and Back, A. D. (1997). “Face recognition: a convolutional neural-network approach.” IEEE Transactions on Neural Networks, 8(1), 98–113.
LeCun, Y., and Bengio, Y. (1998). “The Handbook of Brain Theory and Neural Networks.” M. A. Arbib, ed., MIT Press, Cambridge, MA, USA, 255–258.
Lowe, D. G. (2004). “Distinctive Image Features from Scale-Invariant Keypoints.” International Journal of Computer Vision, 60(2), 91–110.
Moradi, S., Zayed, T., and Hawari, A. H. (2016). “Automated detection of anomalies in sewer closed circuit television videos using proportional data modeling.” International No-Dig 2016 34th International Conference and Exhibition, Beijing, China.
Moradi, S., and Zayed, T. (2017). “Real-Time Defect Detection in Sewer Closed Circuit Television Inspection Videos.” ASCE Pipelines 2017, Phoenix, Arizona,.
Moselhi, O., and Shehab-Eldeen, T. (1999). “Automated detection of surface defects in water and sewer pipes.” Autom. Constr., 8(5), 581–588.
Prasad, B., and Prasanna, S. R. M. (2008). peech, Audio, Image and Biomedical Signal Processing using Neural Networks. Springer-Verlag Berlin Heidelberg, Berlin.
Sarshar, N., Halfawy, M., and Hengmeechai, J. (2009). “Video Processing Techniques for Assisted CCTV Inspection and Condition Rating of Sewers.” Journal of Water Management Modeling, 235–08.
Sinha, S. K., and Fieguth, P. W. (2006a). “Automated detection of cracks in buried concrete pipe images.” Autom. Constr., 15(1), 58–72.
Sinha, S. K., and Fieguth, P. W. (2006b). “Segmentation of buried concrete pipe images.” Autom. Constr., 15(1), 47–57.

Information & Authors

Information

Published In

Go to Pipelines 2018
Pipelines 2018: Condition Assessment, Construction, and Rehabilitation
Pages: 582 - 587
Editors: Christopher C. Macey, AECOM and Jason S. Lueke, Ph.D., Associated Engineering
ISBN (Online): 978-0-7844-8165-3

History

Published online: Jul 11, 2018
Published in print: Jul 12, 2018

Permissions

Request permissions for this article.

Authors

Affiliations

Saeed Moradi [email protected]
Dept. of Building, Civil, and Environmental Engineering, Concordia Univ., Montreal, QC, Canada. E-mail: [email protected]
Tarek Zayed [email protected]
Dept. of Building, Civil, and Environmental Engineering, Concordia Univ., Montreal, QC, Canada. E-mail: [email protected]
Farzaneh Golkhoo [email protected]
Dept. of Building, Civil, and Environmental Engineering, Concordia Univ., Montreal, QC, Canada. E-mail: [email protected]

Metrics & Citations

Metrics

Citations

Download citation

If you have the appropriate software installed, you can download article citation data to the citation manager of your choice. Simply select your manager software from the list below and click Download.

View Options

Get Access

Access content

Please select your options to get access

Log in/Register Log in via your institution (Shibboleth)
ASCE Members: Please log in to see member pricing

Purchase

Save for later Information on ASCE Library Cards
ASCE Library Cards let you download journal articles, proceedings papers, and available book chapters across the entire ASCE Library platform. ASCE Library Cards remain active for 24 months or until all downloads are used. Note: This content will be debited as one download at time of checkout.

Terms of Use: ASCE Library Cards are for individual, personal use only. Reselling, republishing, or forwarding the materials to libraries or reading rooms is prohibited.
ASCE Library Card (5 downloads)
$105.00
Add to cart
ASCE Library Card (20 downloads)
$280.00
Add to cart
Buy Single Paper
$35.00
Add to cart
Buy E-book
$174.00
Add to cart

Get Access

Access content

Please select your options to get access

Log in/Register Log in via your institution (Shibboleth)
ASCE Members: Please log in to see member pricing

Purchase

Save for later Information on ASCE Library Cards
ASCE Library Cards let you download journal articles, proceedings papers, and available book chapters across the entire ASCE Library platform. ASCE Library Cards remain active for 24 months or until all downloads are used. Note: This content will be debited as one download at time of checkout.

Terms of Use: ASCE Library Cards are for individual, personal use only. Reselling, republishing, or forwarding the materials to libraries or reading rooms is prohibited.
ASCE Library Card (5 downloads)
$105.00
Add to cart
ASCE Library Card (20 downloads)
$280.00
Add to cart
Buy Single Paper
$35.00
Add to cart
Buy E-book
$174.00
Add to cart

Media

Figures

Other

Tables

Share

Share

Copy the content Link

Share with email

Email a colleague

Share