Driver Identification Based on Vehicle Telematics Data using LSTM-Recurrent Neural Network

Despite advancements in vehicle security systems, over the last decade, auto-theft rates have increased, and cyber-security attacks on internet-connected and autonomous vehicles are becoming a new threat. In this paper, a deep learning model is proposed, which can identify drivers from their driving behaviors based on vehicle telematics data. The proposed Long-Short-Term-Memory (LSTM) model predicts the identity of the driver based on the individual's unique driving patterns learned from the vehicle telematics data. Given the telematics is time-series data, the problem is formulated as a time series prediction task to exploit the embedded sequential information. The performance of the proposed approach is evaluated on three naturalistic driving datasets, which gives high accuracy prediction results. The robustness of the model on noisy and anomalous data that is usually caused by sensor defects or environmental factors is also investigated. Results show that the proposed model prediction accuracy remains satisfactory and outperforms the other approaches despite the extent of anomalies and noise-induced in the data.

[1]  Nikolaos Avouris,et al.  Machine Learning algorithms : a study on noise sensitivity , 2003 .

[2]  Anupam Joshi,et al.  OBD_SecureAlert: An Anomaly Detection System for Vehicles , 2016, 2016 IEEE International Conference on Smart Computing (SMARTCOMP).

[3]  Nagarajan Natarajan,et al.  Learning with Noisy Labels , 2013, NIPS.

[4]  Eyal Amir,et al.  Real-time Bayesian Anomaly Detection for Environmental Sensor Data , 2007 .

[5]  Naresh Manwani,et al.  Noise Tolerance Under Risk Minimization , 2011, IEEE Transactions on Cybernetics.

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

[7]  Berat A. Erol,et al.  A Novel Streaming Data Clustering Algorithm Based on Fitness Proportionate Sharing , 2019, IEEE Access.

[8]  Gregory D. Abowd,et al.  Driver Classification Based on Driving Behaviors , 2016, IUI.

[9]  Abdollah Homaifar,et al.  Unsupervised Feature Selection through Fitness Proportionate Sharing Clustering , 2018, 2018 IEEE International Conference on Systems, Man, and Cybernetics (SMC).

[10]  Huy Kang Kim,et al.  Know your master: Driver profiling-based anti-theft method , 2016, 2016 14th Annual Conference on Privacy, Security and Trust (PST).

[11]  Hermann Ney,et al.  LSTM Neural Networks for Language Modeling , 2012, INTERSPEECH.

[12]  P. Pongpaibool,et al.  Detection of hazardous driving behavior using fuzzy logic , 2008, 2008 5th International Conference on Electrical Engineering/Electronics, Computer, Telecommunications and Information Technology.

[13]  Arun Kumar Sangaiah,et al.  Human behavior characterization for driving style recognition in vehicle system , 2020, Comput. Electr. Eng..

[14]  Rok Sosic,et al.  Driver identification using automobile sensor data from a single turn , 2016, 2016 IEEE 19th International Conference on Intelligent Transportation Systems (ITSC).

[15]  Xingjian Zhang,et al.  A Study of Individual Characteristics of Driving Behavior based on Hidden Markov Model , 2012 .

[16]  Miriam A. M. Capretz,et al.  Contextual anomaly detection framework for big sensor data , 2015, Journal of Big Data.

[17]  Guigang Zhang,et al.  Deep Learning , 2016, Int. J. Semantic Comput..

[18]  VARUN CHANDOLA,et al.  Anomaly detection: A survey , 2009, CSUR.

[19]  Daniel Roggen,et al.  Deep Convolutional and LSTM Recurrent Neural Networks for Multimodal Wearable Activity Recognition , 2016, Sensors.

[20]  Gregory J. Pottie,et al.  Sensor network data fault types , 2007, TOSN.

[21]  Yoshua Bengio,et al.  Learning Phrase Representations using RNN Encoder–Decoder for Statistical Machine Translation , 2014, EMNLP.

[22]  John H. L. Hansen,et al.  Leveraging sensor information from portable devices towards automatic driving maneuver recognition , 2012, 2012 15th International IEEE Conference on Intelligent Transportation Systems.