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Detection of distraction under naturalistic driving using Galvanic Skin Responses

机译:使用电动皮肤响应检测自然驾驶下的分心

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Distracted driving is the major cause for injuries and fatalities due to road accidents. Driving is a continuous task which requires constant attention of the driver; a certain level of distraction can cause the driver lose his/her attention to the driving task which might lead to an accident. Thus, detection of distraction will help reduce the number of accidents. There has been much research conducted for automatic detection of driver distraction. Many previous approaches have employed camera based techniques. However these methods might detect the distraction rather late to warn the drivers. On the other hand, neurophysiological signals using Electroencephalography (EEG) have shown to be reliable indicator of distraction. However EEG signals are very complex and the technology is intrusive to the drivers, which creates serious doubt for its practical applications. The objective of this study is to investigate if Galvanic Skin Responses (GSR) can be used to detect distraction under naturalistic driving condition using a wrist band wearable. Six driver subjects participated in our realistic driving experiments. Our experimental results demonstrated high accuracies of detection under subject dependents scenarios. We also investigated the possibility of subject independent distraction detection employing non-linear space transformation based on kernel analysis and support vector machines (SVM).
机译:分心驾驶是道路交通事故造成人员伤亡的主要原因。驾驶是一项连续的任务,需要驾驶员不断关注。一定程度的分心会导致驾驶员失去对驾驶任务的注意力,这可能会导致事故。因此,分心的检测将有助于减少事故数量。为了自动检测驾驶员的注意力已经进行了很多研究。许多先前的方法已经采用了基于照相机的技术。但是,这些方法可能会在很晚的时间内发现干扰,以警告驾驶员。另一方面,使用脑电图(EEG)的神经生理信号已显示是分心的可靠指标。然而,EEG信号非常复杂,并且该技术对驾驶员不利,这对其实际应用造成了严重怀疑。这项研究的目的是调查是否可以使用手腕带在自然驾驶条件下使用电动皮肤反应(GSR)来检测干扰。六名驾驶者参加了我们的现实驾驶实验。我们的实验结果表明,在受检者依赖的情况下,检测的准确性很高。我们还研究了基于核分析和支持向量机(SVM)的使用非线性空间变换的主题独立干扰检测的可能性。

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