Visual and cognitive distraction metrics in the age of the smart phone: A basic review.

Daniel V McGehee
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Abstract

Sources of distraction are numerous and varied, and defining and measuring distraction and attention is complicated. The driving task requires constant adjustments and reallocation of attention to cognitive, motor, and visual processes. While it is fairly straightforward to measure distraction in an experimental situation (e.g., simulator, closed course), driver distraction in the real world is highly contextual. While no single metric is capable of capturing the complexities of distraction, several have proved useful in helping researchers gain fuller understanding of it. Few have reached a level of consensus among researchers and user interface designers. ISO and SAE may be considered the 'gold standard' for providing mechanisms through which open scientific consensus-based standards can be achieved.While there are a number of metrics used in predicting distraction, three have been studied closely and are going through the SAE and ISO standards process. They are (1) 'the occlusion method'; (2) the Lane Change Test (LCT); and (3) the Detection Response Task (DRT). The metrics described here apply generally to the experimental context where driving is tightly controlled. Like any method, there are limitations with each-and they don't necessarily agree with one another.Experimental methods and analyses are different than those in naturalistic driving (ND). ND relies more on data mining versus traditional experimental manipulation. ND data are a challenge precisely in that they lack experimental control.In future, driver metrics will go beyond specific measurement of task load, and will include how drivers self regulate when they choose to be distracted.

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智能手机时代的视觉和认知分心指标:基本回顾。
分心的来源多种多样,定义和衡量分心和注意力是很复杂的。驾驶任务需要不断调整和重新分配对认知、运动和视觉过程的注意力。虽然在实验环境中(如模拟器、封闭赛道)衡量驾驶员的注意力分散是相当简单的,但现实世界中的驾驶员注意力分散是高度情境化的。虽然没有单一的指标能够捕捉分心的复杂性,但事实证明,有几个指标有助于研究人员更全面地了解分心。研究人员和用户界面设计师之间很少达成共识。ISO和SAE可以被认为是提供机制的“黄金标准”,通过这些机制,可以实现基于开放科学共识的标准。虽然有许多指标可用于预测分心,但有三个指标已经过仔细研究,并正在通过SAE和ISO标准流程。他们是(1)“遮挡法”;(2)变道测试(LCT);(3)检测响应任务(DRT)。这里描述的指标一般适用于严格控制驾驶的实验环境。像任何方法一样,每种方法都有其局限性,而且它们不一定相互一致。实验方法和分析与自然驾驶(ND)不同。ND更多地依赖于数据挖掘而不是传统的实验操作。ND数据是一个挑战,正是因为它们缺乏实验控制。未来,驾驶员指标将超越对任务负荷的具体衡量,还将包括驾驶员在选择分心时如何自我调节。
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