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首页> 外文期刊>Fortschritte der Physik >Wearable Device-Based System to Monitor a Driver's Stress, Fatigue, and Drowsiness
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Wearable Device-Based System to Monitor a Driver's Stress, Fatigue, and Drowsiness

机译:可穿戴设备的系统,以监测驾驶员的压力,疲劳和嗜睡

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摘要

This paper proposes a wearable device-based system to monitor the abnormal conditions of a driver, including stress, fatigue, and drowsiness. The system measures the motional and physiological information of the driver using the developed wearable device on the wrist. Preprocessing is used to distinguish the valid signal parts of the measured signals, because various noises can occur in wearable sensors. Features are extracted from the signal parts, and an optimal feature set is determined by an analysis of variance and a sequential floating forward selection algorithm. To classify the driver's state, a support vector machine-based classification method is used to obtain high generalization performance considering interdriver variance. Experiments were conducted on an indoor driving simulator, with 28 subjects, to gather data for each state. The classification accuracy was 98.43% for fivefold cross validation on the data. In a subject-independent test, the accuracy was 68.31% for the four states and 84.46% for the three states consisting of normal, stressed, and fatigued or drowsy states. Using the proposed system, the abnormal conditions of the driver can be detected and distinguished. This advantage contributes to safer and more comfortable driving. Furthermore, the utilization of the wearable device makes the system easy to use.
机译:本文提出了一种可穿戴设备的系统,以监测驾驶员的异常条件,包括压力,疲劳和嗜睡。系统使用手腕上的开发的可穿戴设备测量驾驶员的动机和生理信息。预处理用于区分测量信号的有效信号部分,因为可以在可穿戴传感器中发生各种噪声。从信号部件提取特征,并且通过对方差分析和顺序浮动前向选择算法来确定最佳特征集。为了对驾驶员的状态进行分类,基于支持向量机的分类方法用于获得考虑Interdriver方差的高泛化性能。在室内驾驶模拟器上进行实验,其中28个受试者,以收集每个州的数据。对于数据的五倍交叉验证,分类准确性为98.43%。在独立的测试中,四种州的准确性为68.31%,三个国家组成的三个州为84.46%,包括正常,压力和疲劳或昏昏欲睡的国家。使用所提出的系统,可以检测和区分驾驶员的异常条件。这种优势有助于更安全,驾驶更舒适。此外,可穿戴设备的利用使系统易于使用。

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