A cognitive digital twin approach to improving driver compliance and accident prevention

Abstract

Advanced Driver Assistance Systems (ADAS) are crucial for enhancing driving safety by alerting drivers to unrecognized risks. However, traditional ADAS often fail to account for individual decision-making processes, including drivers’ perceptions of the environment and personal driving styles, which can lead to non-compliance with the provided assistance. This paper introduces a novel Cognitive-Digital-Twin-based Driving Assistance System (CDAS), leveraging a personalized driving decision model that dynamically updates based on the driver’s control and observation actions. By incorporating these individual behaviors, CDAS can tailor its assistance options to predict and adapt to the driver’s responses across various scenarios, ensuring both the necessity and safety of its interventions. Through two comprehensive experimental validations, we demonstrate that the cognitive digital twin (CDT) closely aligns with actual driver observation behaviors. By incorporating additional driver observation actions – an input not readily leveraged by data-driven methods without large annotated datasets – the CDT also achieves superior lane-changing predictions compared to deep learning classifiers relying solely on environmental states. Furthermore, CDAS significantly outperforms traditional ADAS in terms of risk reduction and user acceptance, showcasing its potential to enhance driving safety and adaptability effectively. These findings suggest that CDAS represents a substantial advancement towards more personalized and effective driving assistance.

Publication
Accident Analysis & Prevention
Yi Gu
Yi Gu
M.S. Candidate

Yi Gu is a Computer Science M.S. student Class 2022 at ShanghaiTech University.

Shuhang Li
Shuhang Li
Undergraduate Student

Zeyu Li is a Computer Science undergraduate student Class 2018 at ShanghaiTech University.

Bangzheng Fu
Bangzheng Fu
Undergraduate Student

Zeyu Li is a Computer Science undergraduate student Class 2018 at ShanghaiTech University.

Renzhi Tang
Renzhi Tang
Developer

Renzhi Tang is a Computer Science M.S graduate Class 2022 at ShanghaiTech University. He is currently a developer at GuardStrike (深信科创)

Zhihao Jiang
Zhihao Jiang
Assistant Professor

Zhihao Jiang is the director of Human-Cyber-Physical Systems Lab at ShanghaiTech University.

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