Modeling and Detecting Aggressiveness From Driving Signals

The development of advanced driver assistance systems (ADASs) will be a crucial element in the construction of future intelligent transportation systems with the objective of reducing the number of traffic accidents and their subsequent fatalities. Specifically, driving behaviors could be monitored online to determine the crash risk and provide warning information to the driver via their ADAS. In this paper, we focus on aggressiveness as one of the potential causes of traffic accidents. We demonstrate that aggressiveness can be detected by monitoring external driving signals such as lateral and longitudinal accelerations and speed. We model aggressiveness as a linear filter operating on these signals, thus scaling their probability distribution functions and modifying their mean value, standard deviation, and dynamic range. Next, we proceed to validate this model via an experiment, conducted under real driving conditions, involving ten different drivers, traveling a route with five different types of road sections, subject to both smooth and aggressive behaviors. The obtained results confirm the validity of the model of aggressiveness. In addition, they show the generality of this model and its applicability to specific driving signals (speed, longitudinal, and lateral accelerations), every single driver, and every road type. Finally, we build a classifier capable of detecting aggressive behavior from the driving signal. This classifier achieves a success rate up to 92%.

[1]  Hiok Chai Quek,et al.  Driving Profile Modeling and Recognition Based on Soft Computing Approach , 2009, IEEE Transactions on Neural Networks.

[2]  Bart De Schutter,et al.  IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS Editor-In-Chief , 2005 .

[3]  Jennifer Healey,et al.  Detecting stress during real-world driving tasks using physiological sensors , 2005, IEEE Transactions on Intelligent Transportation Systems.

[4]  Yihong Gong,et al.  Driving Safety Monitoring Using Semisupervised Learning on Time Series Data , 2010, IEEE Transactions on Intelligent Transportation Systems.

[5]  Luis M. Bergasa,et al.  Real-time system for monitoring driver vigilance , 2005, ISIE 2005.

[6]  Yihong Gong,et al.  A General Framework to Detect Unsafe System States From Multisensor Data Stream , 2010, IEEE Transactions on Intelligent Transportation Systems.

[7]  M Cameron,et al.  World Report on Road Traffic Injury Prevention. , 2004 .

[8]  Rajesh Subramanian,et al.  Analysis of Speeding-Related Fatal Motor Vehicle Traffic Crashes , 2005 .

[9]  Carlo Giacomo Prato,et al.  Modeling the behavior of novice young drivers during the first year after licensure. , 2010, Accident; analysis and prevention.

[10]  Andreas Riener,et al.  Subliminal Persuasion and Its Potential for Driver Behavior Adaptation , 2012, IEEE Transactions on Intelligent Transportation Systems.

[11]  E. Petridou,et al.  Human factors in the causation of road traffic crashes , 2004, European Journal of Epidemiology.

[12]  Robert Foss,et al.  Enhancing the effectiveness of graduated driver licensing legislation. , 2003, Journal of safety research.

[13]  Chris S Dula,et al.  Risky, aggressive, or emotional driving: addressing the need for consistent communication in research. , 2003, Journal of Safety Research.

[14]  Miguel Ángel Sotelo,et al.  Real-time system for monitoring driver vigilance , 2004, Proceedings of the IEEE International Symposium on Industrial Electronics, 2005. ISIE 2005..

[15]  Kazuya Takeda,et al.  Driver Modeling Based on Driving Behavior and Its Evaluation in Driver Identification , 2007, Proceedings of the IEEE.

[16]  Tomer Toledo,et al.  In-vehicle data recorders for monitoring and feedback on drivers' behavior , 2008 .

[17]  Kazuya Takeda,et al.  Driver identification using driving behavior signals , 2005, Proceedings. 2005 IEEE Intelligent Transportation Systems, 2005..

[18]  I J Wouters,et al.  Traffic accident reduction by monitoring driver behaviour with in-car data recorders. , 2000, Accident; analysis and prevention.

[19]  Anil K. Jain,et al.  Unsupervised Learning of Finite Mixture Models , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[20]  Mohamed Medhat Gaber,et al.  Towards situation-awareness and ubiquitous data mining for road safety: rationale and architecture for a compelling application , 2005 .

[21]  Tamitza Toroyan,et al.  Global status report on road safety , 2009, Injury Prevention.

[22]  Dejan Mitrovic,et al.  Reliable method for driving events recognition , 2005, IEEE Transactions on Intelligent Transportation Systems.

[23]  L. Evans,et al.  The dominant role of driver behavior in traffic safety. , 1996, American journal of public health.

[24]  Motoyuki Akamatsu Measuring driving behavior , 2002, Proceedings of the 41st SICE Annual Conference. SICE 2002..