驾驶员认知分心检测的非侵入性生理测量:眼和嘴的运动

A. Azman, Qinggang Meng, E. Edirisinghe
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引用次数: 38

摘要

司机的分心可以分为三个主要部分:视觉,认知和手动。驾驶员的视觉和手动分心可以在物理上检测到。然而,评估认知分心是困难的,因为它更像是一种“内部”分心,而不是任何容易测量的“外部”分心。有几种方法可用于检测认知驾驶分心。生理测量、表现测量(主要和次要任务)和评定量表是检测认知分心的一些众所周知的测量方法。这项研究的重点是生理测量,特别是司机的眼睛和嘴巴的运动。六个不同的参与者参与了我们的实验。实验时间为8分49秒。使用FaceLab视觉机器相机获得了眼睛和嘴巴的运动,发现它们的r值的幅度超过60%,从而证明它们彼此之间具有很强的相关性。
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Non intrusive physiological measurement for driver cognitive distraction detection: Eye and mouth movements
Driver distractions can be categorized into 3 major parts:-visual, cognitive and manual. Visual and manual distraction on a driver can be physically detected. However, assessing cognitive distraction is difficult since it is more of an “internal” distraction rather than any easily measured “external” distraction. There are several methods available that can be used to detect cognitive driver distraction. Physiological measurements, performance measures (primary and secondary tasks) and rating scales are some of the well-known measures to detect cognitive distraction. This study focused on physiological measurements, specifically on a driver's eye and mouth movements. Six different participants were involved in our experiment. The duration of the experiment was 8 minutes and 49 seconds for each participant. Eye and mouth movements were obtained using the FaceLab Seeing Machine cameras and their magnitude of the r-values were found more than 60% thus proving that they are strongly correlated to each other.
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