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Detecting eye movements in dynamic environments

机译:在动态环境中检测眼睛运动

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摘要

To take advantage of the increasing number of in-vehicle devices, automobile drivers must divide their attention between primary (driving) and secondary (operating in-vehicle device) tasks. In dynamic environments such as driving, however, it is not easy to identify and quantify how a driver focuses on the various tasks he/she is simultaneously engaged in, including the distracting tasks. Measures derived from the driver's scan path have been used as correlates of driver attention. This article presents a methodology for analyzing eye positions, which are discrete samples of a subject's scan path, in order to categorize driver eye movements. Previous methods of analyzing eye positions recorded in a dynamic environment have relied completely on the manual identification of the focus of visual attention from a point of regard superimposed on a video of a recorded scene, failing to utilize information regarding movement structure in the raw recorded eye positions. Although effective, these methods are too time consuming to be easily used when the large data sets that would be required to identify subtle differences between drivers, under different road conditions, and with different levels of distraction are processed. The aim of the methods presented in this article are to extend the degree of automation in the processing of eye movement data by proposing a methodology for eye movement analysis that extends automated fixation identification to include smooth and saccadic movements. By identifying eye movements in the recorded eye positions, a method of reducing the analysis of scene video to a finite search space is presented. The implementation of a software tool for the eye movement analysis is described, including an example from an on-road test-driving sample.
机译:为了利用数量不断增加的车载设备,汽车驾驶员必须将注意力集中在主要(驾驶)和次要(操作车载设备)任务之间。然而,在诸如驾驶的动态环境中,识别并量化驾驶员如何专注于他/她同时从事的各种任务(包括分心的任务)并不容易。从驾驶员的扫描路径得出的量度已被用作驾驶员注意力的相关性。本文介绍了一种用于分析眼睛位置的方法,这些眼睛位置是对象扫描路径的离散样本,以便对驾驶员的眼睛运动进行分类。分析动态环境中记录的眼睛位置的先前方法完全依赖于从叠加在已记录场景的视频上的角度来手动识别视觉注意力的焦点,而无法利用有关原始已记录眼睛的运动结构的信息职位。尽管有效,但是当处理需要大数据集以识别驾驶员之间,细微差别,不同路况和分散程度的情况下所需的大数据集时,这些方法太耗时而无法轻松使用。本文中提出的方法的目的是通过提出一种用于眼动分析的方法,以扩展眼动数据处理的自动化程度,该方法将自动注视识别扩展到包括平滑运动和眼跳运动。通过识别记录的眼睛位置中的眼睛运动,提出了一种将场景视频分析减少到有限搜索空间的方法。描述了用于眼动分析的软件工具的实现,包括一个来自道路驾驶测试样本的示例。

著录项

  • 来源
    《Behavior Research Methods》 |2006年第4期|p.667-682|共16页
  • 作者

    BRYAN REIMER; MANBIR SODHI;

  • 作者单位

    AgeLab, Massachusetts Institute of Technology, 77 Massachusetts Avenue, Room E40-291, Cambridge, MA 02139;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 心理学;
  • 关键词

  • 入库时间 2022-08-17 13:41:38

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