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Driver Behavior Profiling and Recognition Using Deep-Learning Methods: In Accordance with Traffic Regulations and Experts Guidelines

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Publisher MDPI
Date 2022 Feb 15
PMID 35162493
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Abstract

The process of collecting driving data and using a computational model to generate a safety score for the driver is known as driver behavior profiling. Existing driver profiles attempt to categorize drivers as either safe or aggressive, which some experts say is not practical. This is due to the "safe/aggressive" categorization being a state that describes a driver's conduct at a specific point in time rather than a continuous state or a human trait. Furthermore, due to the disparity in traffic laws and regulations between countries, what is considered aggressive behavior in one place may differ from what is considered aggressive behavior in another. As a result, adopting existing profiles is not ideal. The authors provide a unique approach to driver behavior profiling based on timeframe data segmentation. The profiling procedure consists of two main parts: row labeling and segment labeling. Row labeling assigns a safety score to each second of driving data based on criteria developed with the help of Malaysian traffic safety experts. Then, rows are accumulated to form timeframe segments. In segment labeling, generated timeframe segments are assigned a safety score using a set of criteria. The score assigned to the generated timeframe segment reflects the driver's behavior during that time period. Following that, the study adopts three deep-learning-based algorithms, namely, Deep Neural Network (DNN), Recurrent Neural Network (RNN), and Convolutional Neural Network (CNN), to classify recorded driving data according to the established profiling procedure, and selects the most suitable one for a proposed recognition system. Various techniques were used to prevent the classification algorithms from overfitting. Using gathered naturalistic data, the validity of the modulated algorithms was assessed on various timeframe segments ranging from 1 to 10 s. Results showed that the CNN, which achieved an accuracy of 96.1%, outperformed the other two classification algorithms and was therefore recommended for the recognition system. In addition, recommendations were outlined on how the recognition system would assist in improving traffic safety.

Citing Articles

Investigating the Effect of COVID-19 on Driver Behavior and Road Safety: A Naturalistic Driving Study in Malaysia.

Al-Hussein W, Li W, Por L, Ku C, Alredany W, Leesri T Int J Environ Res Public Health. 2022; 19(18).

PMID: 36141497 PMC: 9517654. DOI: 10.3390/ijerph191811224.

References
1.
Bastos J, Dos Santos P, Amancio E, Gadda T, Ramalho J, King M . Naturalistic Driving Study in Brazil: An Analysis of Mobile Phone Use Behavior while Driving. Int J Environ Res Public Health. 2020; 17(17). PMC: 7504609. DOI: 10.3390/ijerph17176412. View

2.
Silva I, Eugenio Naranjo J . A Systematic Methodology to Evaluate Prediction Models for Driving Style Classification. Sensors (Basel). 2020; 20(6). PMC: 7146739. DOI: 10.3390/s20061692. View

3.
Farabet C, Couprie C, Najman L, LeCun Y . Learning hierarchical features for scene labeling. IEEE Trans Pattern Anal Mach Intell. 2013; 35(8):1915-29. DOI: 10.1109/TPAMI.2012.231. View

4.
Winlaw M, Steiner S, MacKay R, Hilal A . Using telematics data to find risky driver behaviour. Accid Anal Prev. 2019; 131:131-136. DOI: 10.1016/j.aap.2019.06.003. View

5.
Al-Hussein W, Mat Kiah M, Yee P, Zaidan B . A systematic review on sensor-based driver behaviour studies: coherent taxonomy, motivations, challenges, recommendations, substantial analysis and future directions. PeerJ Comput Sci. 2021; 7:e632. PMC: 8409336. DOI: 10.7717/peerj-cs.632. View