Title
Inference of driver behavior using correlated IoT data from the vehicle telemetry and the driver mobile phone
Abstract
Drivers' behavior in traffic is a determining factor for the rate of accidents on roads and highways. This paper presents the design of an intelligent IoT system capable of inferring and warning about road traffic risks and danger zones, based on data obtained from the vehicles and their drivers mobile phones, thus helping to avoid accidents and seeking to preserve the lives of the passengers. The proposed approach is to collect vehicle telemetry data and mobile phone sensors data through an IoT network and then to analyze the driver's behavior while driving, along with data from the environment. The results of the inference serve to alert drivers about incidents in their trajectory as well as to provide feedback on how they are driving. The proposal is validated using a developed prototype to test its data collection and inference features in a small scale experiment.
Year
DOI
Venue
2019
10.15439/2019F263
2019 Federated Conference on Computer Science and Information Systems (FedCSIS)
Keywords
Field
DocType
Internet of Things,Vehicular networks,Driving behavior,Inference,OBD-II,Android
Data mining,Data collection,Android (operating system),Inference,Computer science,Internet of Things,Telemetry,Real-time computing,Mobile phone,Trajectory,Vehicular ad hoc network
Conference
ISSN
ISBN
Citations 
2325-0348
978-1-5386-8005-6
0
PageRank 
References 
Authors
0.34
7
8