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An EEG fatigue driving prevention system based on data fusion technologyThis article studies the fatigue driving warning system based on brain waves

Published:03 May 2024Publication History

ABSTRACT

With the rapid development of road traffic, global road traffic safety has gradually gained attention, and traffic accidents caused by fatigue driving are becoming more and more serious. The occurrence of fatigue driving is attributed to the presence of a sense of luck among some citizens towards fatigue driving, as well as the lack of effective inspections and prevention measures by the state for such behavior. A fatigue driving detection system needs to be designed to solve this problem. This article provides a brain wave prevention fatigue driving system based on data fusion technology. The system is mainly composed of the STM32 main control module, the TGAM module, the Bluetooth communication module, the display module, the acceleration acquisition module, the heart rate acquisition module, the GSM module and the voice alarm module. When a fatigue state of the driver is detected by the system, a drive signal will be sent by the system to the external alarm device to activate the alarm function and urge the driver to stop and rest. In the end, a fatigue detection system with portability, efficiency, and stability will be established. Studying this system can not only reduce the incidence of traffic accidents, further improve the safety of road traffic, but also has immeasurable social significance and economic value for society and the public.

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      cover image ACM Other conferences
      IoTAAI '23: Proceedings of the 2023 5th International Conference on Internet of Things, Automation and Artificial Intelligence
      November 2023
      902 pages
      ISBN:9798400716485
      DOI:10.1145/3653081

      Copyright © 2023 ACM

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      Publication History

      • Published: 3 May 2024

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