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Integrating the saliency map with distract-r to assess driver distraction of vehicle displays.

机译:将显着性地图与distraction-r集成在一起,以评估驾驶员对车辆显示屏的干扰。

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摘要

There are a growing number of potential distractions in vehicles today, such as navigation, collision warning, and entertainment systems. These systems promise substantial benefits for driving comfort, efficiency and safety, but they might also distract drivers. This dissertation develops computational cognitive models of driver behavior to assess the distraction potential of vehicle displays. One of the main goals of this dissertation is to integrate a saliency-based model, a saliency map, into Distract-R to build a computational model that can account for top-down and bottom-up attentional influences. The saliency-based model quantifies exogenous influences (e.g., visual features of a display) of visual attention while Distract-R quantifies endogenous influences (e.g., drivers' goals and expectations) of visual attention with respect to secondary tasks and vehicle displays. Two experiments were conducted to guide model development and to validate model predications. The experiments showed that design features of vehicle displays affected driving performance and glance duration to the secondary task, and both top-down and bottom-up attentional processes were engaged when drivers interacted with driver-vehicle interfaces. To integrate Distract-R and the saliency map, activation fields that describe the interaction between top-down and bottom-up attentional process were used to determine glance duration to the display. The integrated model was validated with empirical data, showing that the model could predict drivers' pattern of glance durations to a level comparable to between-subject variability--the theoretical limit of prediction. This dissertation contributes to modeling driver distraction by integrating two models to account both top-down and bottom-up influence on visual attention, and by building a tool for assessing the potential distraction of vehicle displays.
机译:如今,诸如导航,碰撞预警和娱乐系统等车辆中的潜在干扰越来越多。这些系统有望为驾驶舒适性,效率和安全性带来实质性好处,但它们也可能分散驾驶员的注意力。本文开发了驾驶员行为的计算认知模型,以评估车辆显示器的潜在干扰。本文的主要目标之一是将基于显着性的模型(显着性图)集成到Distract-R中,以构建可解释自上而下和自下而上的注意影响的计算模型。基于显着性的模型对视觉注意力的外在影响(例如显示器的视觉特征)进行了量化,而Distract-R量化了视觉对次要任务和车辆显示器的内在影响(例如驾驶员的目标和期望)。进行了两个实验以指导模型开发和验证模型预测。实验表明,车辆显示器的设计特征会影响驾驶性能和对次要任务的扫视时间,并且当驾驶员与驾驶员-车辆界面交互时,会采用自上而下和自下而上的注意过程。为了集成Distract-R和显着性图,使用描述自上而下和自下而上的注意力过程之间的交互作用的激活字段来确定显示的持续时间。集成模型已通过经验数据进行了验证,表明该模型可以将驾驶员的扫视持续时间模式预测为与受试者之间的可变性(预测的理论极限)相当的水平。本文通过集成两个模型来解决自上而下和自下而上对视觉注意力的影响,并通过构建评估车辆显示器潜在分心的工具,有助于对驾驶员的分心进行建模。

著录项

  • 作者

    Lee, Joonbum.;

  • 作者单位

    The University of Wisconsin - Madison.;

  • 授予单位 The University of Wisconsin - Madison.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 136 p.
  • 总页数 136
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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