基于车载信号处理的驾驶员分心检测

Seon-Ho Im, Cheolha Lee, Seok-Joo Yang, Jinhak Kim, B. You
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引用次数: 9

摘要

司机注意力不集中是造成交通事故的主要原因之一。许多人已经研究了减少司机分心和帮助他们安全驾驶的方法。许多研究都涉及直接或间接监测司机状态并警告他们风险的产品。在之前的一些研究中,测试对象被强迫正常和不注意地驾驶,以找到明显的特征模式。但问题是,每个驾驶员在正常驾驶和异常驾驶时都有不同的模式。此外,在真实的驾驶条件下,他们不会故意疏忽大意,因此模式可能无法复制。在本文中,我们提出了利用车内信号检测分心的算法和实验结果。将无监督学习和监督学习两种机器学习方案结合使用,可以在真实驾驶情况下对正常驾驶特征和分心驾驶特征进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Driver distraction detection by in-vehicle signal processing
Driver distraction is one of the major causes of vehicle accidents. Many people have researched methods for reducing distraction of drivers and helping them to drive safely. Many studies have concerned products that monitor the state of drivers directly or indirectly and warn them of risk. In some previous studies, test subjects were forced to drive normally and inattentively to find the distinct feature patterns. However, the problem is that each driver can have different patterns in normal and abnormal driving. Moreover, in real driving conditions, they do not behave inattentively on purpose, and thus the patterns may not be replicated. In this paper, we present algorithms and experimental results that detect distraction by using in-vehicle signals without planned distraction. By using two kinds of machine learning schemes-unsupervised learning and supervised learning together-, normal and distracted driving features can be classified in real driving situation.
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