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Detection and Research on Unsafe Driving of Taxi Drivers

机译:出租车司机不安全驾驶的检测与研究

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In response to the unsafe driving of taxi drivers during the epidemic, the design and implementation of the driver's face registration and detection of whether the driver wears a mask, detection of the driver's fatigue physiological signals and multiple integration are designed. Target detection algorithm based on MobileNetV2 to realize mask detection. Combine MTCNN and Face-Net organically to realize driver's face login. The cerebellar neural network model is used to fuse the 12 fatigue monitoring signals EMG, EEG, etc. extracted by the simulated driving experiment platform to obtain a multi-integrated fatigue monitoring control model. After the fatigue driving multiple physiological indicators of the simulated driving platform, the technical model is studied and verified. It is concluded that the multiple fusion fatigue monitoring control model has higher accuracy than the traditional single signal monitoring.
机译:为了响应流行病期间出租车驾驶员的不安全驾驶,设计和实施驾驶员的脸部注册和检测驾驶员是否佩戴掩模,检测驾驶员的疲劳生理信号和多集成度。基于MobileNetv2实现掩模检测的目标检测算法。组合MTCNN和面部网有机地实现驾驶员的脸部登录。大脑神经网络模型用于熔断由模拟驾驶实验平台提取的12个疲劳监测信号EMG,EEG等,以获得多集成疲劳监测控制模型。在驱动模拟驾驶平台的多个生理指标之后,研究和验证了技术模型。结论是,多融合疲劳监测控制模型的准确性高于传统的单信号监控。

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