A driving early warning method based on multi-factor fusion
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1.College of Information Engineering and Automation, Kunming University of Science and Technol-ogy,Kunming 650500; 2.Yunnan Key Lab for Computer Technology Applications, Kunming 650500

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TP391

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    Abstract:

    Based on multi-factor fusion, this paper proposes a new driving early warning method. First, combining the existing fatigue factors, a risk assessment criterion is proposed based on multiple factors, which overcomes traditional single-factor methods’ limitations in application and shortcomings of being vulnerable to external interference. Secondly, a detection network is proposed based on SSD, in which the backbone network VGG is replaced with the advanced MobileNetV3, fast target detection is achieved with a modified NMS layer, and finally multi-task detection is realized with newly designed multi-task detectors and loss functions. After transfer-learning with the pre-training weights, the tested detection accuracy rate is 95.7%, and the speed is 41fps, which is accurate and real-time.

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  • Received:
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  • Online: September 18,2024
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