驾驶员认知工作负载估计:数据驱动的视角

Yilu Zhang, Yuri Owechko, Jing Zhang
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引用次数: 80

摘要

驾驶员工作负荷估计(Driver workload estimate, DWE)是指对驾驶员和驾驶环境进行实时监控,持续获取驾驶员工作负荷知识的活动。通过了解驾驶员的工作量,车载信息系统(IVIS)可以在驾驶员有空闲能力接收和理解这些信息时提供信息,这既有效又高效。然而,经过多年的研究,构建一个鲁棒的DWE系统仍然很困难。本文分析了现有DWE系统开发方法所面临的困难,提出了一种基于机器学习的DWE开发流程。使用一种流行的机器学习方法——决策树,报告了一些初步但有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Driver cognitive workload estimation: a data-driven perspective
Driver workload estimation (DWE) refers to the activities of monitoring a driver and the driving environment in real-time and acquiring the knowledge of the driver's workload continuously. With this knowledge of the driver's workload, the in-vehicle information systems (IVIS) can provide information on when the driver has the spare capacity to receive and comprehend it, which is both effective and efficient. However, after years of study, it is still difficult to build a robust DWE system. In this paper, we analyze the difficulties facing the existing methodology of developing DWE systems and propose a machine-learning-based DWE development process. Some preliminary but promising results are reported using a popular machine-learning method, the decision tree.
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