基于热图的驾驶员认知分心估计方法

Antonyo Musabini, Mounsif Chetitah
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引用次数: 6

摘要

为了提高道路安全,在视觉和手动干扰之外,现代智能汽车还需要检测认知分心驾驶(即驾驶员的思维走神)。本研究旨在探讨认知过程对驾驶员注视行为的影响。提出了一种新的基于图像的驾驶员视线分散表征方法来估计认知分心。数据是在开放的高速公路上收集的,有一个定制的协议来制造认知分心。创造形状的视觉差异表明,驾驶员在中性驾驶时探索的区域比分心驾驶时探索的区域更大。训练基于支持向量机(SVM)的分类器,即使使用小数据集,对于两类问题也能达到85.2%的准确率。因此,该方法具有利用注视信息识别认知分心的判别能力。最后,这项工作详细说明了这种基于图像的表示如何对其他分心驾驶检测有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heatmap-Based Method for Estimating Drivers’ Cognitive Distraction
In order to increase road safety, among the visual and manual distractions, modern intelligent vehicles need also to detect cognitive distracted driving (i.e., the driver’s mind wandering). In this study, the influence of cognitive processes on the driver’s gaze behavior is explored. A novel image-based representation of the driver’s eye-gaze dispersion is proposed to estimate cognitive distraction. Data are collected on open highway roads, with a tailored protocol to create cognitive distraction. The visual difference of created shapes shows that a driver explores a wider area in neutral driving compared to distracted driving. Support vector machine (SVM)-based classifiers are trained, and 85.2% of accuracy is achieved for a two-class problem, even with a small dataset. Thus, the proposed method has the discriminative power to recognize cognitive distraction using gaze information. Finally, this work details how this image-based representation could be useful for other cases of distracted driving detection.
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