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Driver workload classification through neural network modeling using physiological indicators

机译:使用生理指标的神经网络建模驾驶员工作负载分类

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Advanced Driver Assistance Systems may have a positive effect on traffic flow efficiency, the environment, safety and comfort. However these systems may have a negative impact on driving behavior following a change in driver workload. It is therefore crucial to develop a so-called driver workload manager. In order to manage driver workload an adequate classification of driver workload is indispensible. In this contribution we propose to classify and predict driver workload through physiological indicators of driver workload, driver characteristics and characteristics of the driving condition using a neural network modeling approach. We show that the proposed network yields a very good classification of driver workload. The contribution finishes with a discussion section and recommendations for future research.
机译:先进的驾驶员辅助系统可能对交通流量,环境,安全性和舒适性具有积极影响。然而,在驾驶员工作量的变化之后,这些系统可能对驾驶行为产生负面影响。因此,开发所谓的驱动程序工作负载管理器是至关重要的。为了管理驱动程序工作负载,驱动程序工作负载的充分分类是必不可少的。在这一贡献中,我们建议通过使用神经网络建模方法通过驾驶员工作负载,驾驶员特性和特性的生理指标进行分类和预测驱动程序工作。我们表明所提出的网络产生了非常好的驾驶员工作量分类。贡献与讨论部分和未来研究的建议结束。

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