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Driver Behavior Modeling Toward Autonomous Vehicles: Comprehensive Review

期刊

IEEE ACCESS
卷 11, 期 -, 页码 22788-22821

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2023.3249144

关键词

Human factor; Behavioral sciences; Predictive models; Vehicle safety; Accidents; Autonomous vehicles; Vehicle dynamics; Decision making; Vehicle driving; Autonomous driving; Driver behavior modeling (DBM); autonomous vehicles; behavior recognition; human-like; car-following; lane-changing; perception; decision-making; data-driven; vehicle control

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Driver behavior models are used in self-coaching, accident prevention studies, and developing driver-assisting systems. Driver behavior recognition has revolutionized autonomous vehicles and traffic management studies. This survey reviews the different driver behavior models and modeling approaches.
Driver behavior models have been used as input to self-coaching, accident prevention studies, and developing driver-assisting systems. In recent years, driver behavior recognition has revolutionized autonomous vehicles (AVs) and traffic management studies. This comprehensive survey provides an up-to-date review of the different driver behavior models and modeling approaches. In heterogeneous streets where humans and autonomous vehicles operate simultaneously, predicting the intent and action of human drivers is crucial for AVs with the help of wireless communication and artificial intelligence (AI) technologies. Therefore, the review also summarizes the applications of driver behavior modeling (DBM) for effective behavior recognition and human-like AV driving. Moreover, the review also covers the application of DBM in capturing behaviors of complex dynamic driving tasks. In this review, we solely cover car-following (CF) and lane-changing (LC) maneuvers.

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