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A Driver State Detection System—Combining a Capacitive Hand Detection Sensor With Physiological Sensors

机译:驾驶员状态检测系统-电容式手检测传感器与生理传感器的结合

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摘要

With respect to automotive safety, the driver plays a crucial role. Stress level, tiredness, and distraction of the driver are therefore of high interest. In this paper, a driver state detection system based on cellular neural networks (CNNs) to monitor the driver’s stress level is presented. We propose to include a capacitive-based wireless hand detection (position and touch) sensor for a steering wheel utilizing ink-jet printed sensor mats as an input sensor in order to improve the performance. A driving simulator platform providing a realistic virtual traffic environment is utilized to conduct a study with 22 participants for the evaluation of the proposed system. Each participant is driving in two different scenarios, each representing one of the two no-stress/stress driver states. A “threefold” cross validation is applied to evaluate our concept. The subject dependence is considered carefully by separating the training and testing data. Furthermore, the CNN approach is benchmarked against other state-of-the-art machine learning techniques. The results show a significant improvement combining sensor inputs from different driver inherent domains, giving a total related detection accuracy of 92%. Besides that, this paper shows that in case of including the capacitive hand detection sensor, the accuracy increases by 10%. These findings indicate that adding a subject-independent sensor, such as the proposed capacitive hand detection sensor, can significantly improve the detection performance.
机译:在汽车安全方面,驾驶员起着至关重要的作用。因此,驾驶员的压力水平,疲倦和分心非常重要。本文提出了一种基于细胞神经网络(CNN)的驾驶员状态检测系统,以监控驾驶员的压力水平。我们建议为方向盘包括一个基于电容的无线手部检测(位置和触摸)传感器,以利用喷墨打印的传感器垫作为输入传感器,从而提高性能。利用提供逼真的虚拟交通环境的驾驶模拟器平台,与22名参与者进行了研究,以评估所提议的系统。每个参与者在两种不同的场景中驾驶,每个场景代表两种无压力/无压力驾驶员状态之一。应用“三重”交叉验证来评估我们的概念。通过分离训练和测试数据,可以仔细考虑受试者的依赖性。此外,CNN方法已与其他最新的机器学习技术进行了比较。结果表明,将来自不同驾驶员固有域的传感器输入组合在一起将带来显着改善,总的相关检测精度为92%。除此之外,本文表明,在包括电容式手检测传感器的情况下,精度提高了10%。这些发现表明,添加独立于对象的传感器(例如,建议的电容式手检测传感器)可以显着提高检测性能。

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