Eye Tracking in Driver Attention Research—How Gaze Data Interpretations Influence What We Learn

Christer Ahlström, K. Kircher, M. Nyström, Benjamin Wolfe
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引用次数: 12

Abstract

Eye tracking (ET) has been used extensively in driver attention research. Amongst other findings, ET data have increased our knowledge about what drivers look at in different traffic environments and how they distribute their glances when interacting with non-driving related tasks. Eye tracking is also the go-to method when determining driver distraction via glance target classification. At the same time, eye trackers are limited in the sense that they can only objectively measure the gaze direction. To learn more about why drivers look where they do, what information they acquire foveally and peripherally, how the road environment and traffic situation affect their behavior, and how their own expertise influences their actions, it is necessary to go beyond counting the targets that the driver foveates. In this perspective paper, we suggest a glance analysis approach that classifies glances based on their purpose. The main idea is to consider not only the intention behind each glance, but to also account for what is relevant in the surrounding scene, regardless of whether the driver has looked there or not. In essence, the old approaches, unaware as they are of the larger context or motivation behind eye movements, have taken us as far as they can. We propose this more integrative approach to gain a better understanding of the complexity of drivers' informational needs and how they satisfy them in the moment.
驾驶员注意力研究中的眼动追踪——凝视数据解释如何影响我们的学习
眼动追踪技术在驾驶员注意力研究中得到了广泛的应用。在其他发现中,ET数据增加了我们对驾驶员在不同交通环境中看什么以及他们在与非驾驶相关的任务互动时如何分配目光的了解。眼动追踪也是通过目光目标分类来确定司机注意力分散的首选方法。同时,眼动仪的局限性在于它只能客观地测量注视方向。为了更多地了解为什么司机会看他们所做的事情,他们在中央和外围获得什么信息,道路环境和交通状况如何影响他们的行为,以及他们自己的专业知识如何影响他们的行为,有必要超越计算司机所关注的目标。在这篇透视文章中,我们提出了一种基于目的对一瞥进行分类的一瞥分析方法。其主要思想是,不仅要考虑每一次目光背后的意图,还要考虑与周围场景相关的内容,而不管司机是否看过那里。从本质上讲,旧的方法,因为没有意识到眼球运动背后更大的背景或动机,已经把我们带到了最远的地方。我们提出了这种更综合的方法,以更好地理解驾驶员信息需求的复杂性,以及他们如何在当下满足这些需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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