Paper title: |
Detecting Pavement Patches Utilizing Smartphones Technology and Vehicles |
Authors: |
Charalambos Kyriakou and Symeon E. Christodoulou |
Summary: |
Presented herein is a study on the utilization of low-cost technology for detection of roadway pavement anomalies (patches and potholes), by use of sensors on smartphones and of automobilesÕ on-board diagnostic (OBD-II) devices for the collection and analysis of vibration-related data while vehicles are in movement. The mobile data collection kit consists of a triaxial accelerometer, a gyroscope and a global positioning sensor. The smartphone-based data collection is complimented with robust regression analysis and a bagged-trees classification model for the classification of pavement anomalies. The proposed system is readily available, low-cost and adequately accurate, and can be utilized in crowd-sourced applications for pavement monitoring. Further, the proposed methodology has been field-tested, exhibiting detection accuracy levels higher than 90% for pavement patches, and it is currently expanded to include larger datasets and a bigger number of pavement defect types. |
Type: |
regular paper |
Year of publication: |
2017 |
Keywords: |
Pavement Anomalies, Detection and Classification, Smartphones Technology, Robust Regression, Bagged Trees |
Series: |
jc3:2017 |
Download paper: |
/pdfs/LC3_2017_paper_109.pdf |
Citation: |
Charalambos Kyriakou and Symeon E. Christodoulou (2017).
Detecting Pavement Patches Utilizing Smartphones Technology and Vehicles. Lean and Computing in Construction Congress (LC3): Volume I Ð Proceedings of the Joint Conference on Computing in Construction (JC3), July 4-7, 2017, Heraklion, Greece, pp. 859-866,
http://itc.scix.net/paper/lc3-2017-109
|