Title :
Driving Safety Monitoring Using Semisupervised Learning on Time Series Data
Author :
Wang, Jinjun ; Zhu, Shenghuo ; Gong, Yihong
Author_Institution :
NEC Labs. America, Inc., Cupertino, CA, USA
Abstract :
This paper introduces a dangerous-driving warning system that uses statistical modeling to predict driving risks. The major challenge of the research is how to discover the safe/dangerous driving patterns from a sparsely labeled training data set. This paper proposes a semisupervised learning method to utilize both the labeled and the unlabeled data, as well as their interdependence to build a proper danger-level function. In addition, the learned function adopts a continuous parametric form, which is more suitable in modeling the continuous safe/dangerous-driving state transitions in a practical dangerous-driving warning system. Our comprehensive experimental evaluations reveal that, in comparison with driving danger-level estimation using classification-based methods, such as the hidden Markov model (HMM) or the conditional random field algorithm, the proposed method requires less training time and achieved higher prediction accuracy.
Keywords :
learning (artificial intelligence); road safety; statistical analysis; time series; traffic engineering computing; dangerous-driving warning system; driving safety monitoring; semisupervised learning; statistical modeling; time series data; Acceleration; Alarm systems; Automobiles; Biomedical monitoring; Hidden Markov models; Intelligent transportation systems; Intelligent vehicles; Predictive models; Safety; Semisupervised learning; Driving safety monitoring; functional safety; semisupervised learning;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2010.2050200