Road Surface Quality Detection using Smartphone Sensors: Egyptian Roads Case Study

El-Kady, Aya; Karim Emara; Eleliemy, Mohamed Hamdy; Shaaban, Eman;

Abstract


Road anomalies have significant negative effects on both passengers and vehicles such as traffic congestion and accidents. Nowadays, smartphones are ubiquitous and used by so many drivers, at least to know the driving directions to their destination. Several studies utilized this observation and used the smartphone embedded sensors to detect road anomalies. In this paper, we evaluate the effectiveness of this methodology with sensor readings obtained while driving in Egyptian roads. An android application is developed to record sensor readings while driving over the road anomalies. Four datasets are collected for different streets in Cairo of total duration of 80 minutes and about 50K records. To automatically label these datasets, two clustering techniques (K-Means and DBSCAN) are evaluated to give the ground truth for the sensor readings if they represent road anomalies or normal road surface. It is noticed that DBSCAN can accurately cluster sensor readings than K-Means can do. Finally, a classification model is built to classify unseen sensor readings and identify the road surface quality. An accuracy of 96% can be obtained from the built classifier confirming the effectiveness of the adopted methodology in evaluating the road surface quality in Egypt.


Other data

Title Road Surface Quality Detection using Smartphone Sensors: Egyptian Roads Case Study
Authors El-Kady, Aya; Karim Emara ; Eleliemy, Mohamed Hamdy; Shaaban, Eman
Keywords road anomalies;trajectory clustering;smartphone sensors;road defect prediction
Issue Date 1-Dec-2019
Conference Proceedings - 2019 IEEE 9th International Conference on Intelligent Computing and Information Systems, ICICIS 2019
ISBN 9781728139951
DOI 10.1109/ICICIS46948.2019.9014721
Scopus ID 2-s2.0-85083398596

Recommend this item

Similar Items from Core Recommender Database

Google ScholarTM

Check

Citations 5 in scopus
views 31 in Shams Scholar


Items in Ain Shams Scholar are protected by copyright, with all rights reserved, unless otherwise indicated.