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Human performance in visual search for multiple targets.

机译:人类在视觉搜索中对多个目标的表现。

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摘要

This study extended the models and data for locating a single target to search tasks for locating multiple targets. Multiple-target search tasks can be categorized into two types. In exhaustive visual search tasks, observers have to find all given targets, and in non exhaustive visual search tasks, observers must choose when to stop searching. The first topic of this study was to derive human performance models for exhaustive multiple-target search and then to validate the models. Random and systematic models for an exhaustive search task were derived which were expected to describe upper and lower bounds of human search performance. The proposed random search model was described by a hypo-exponential distribution, while the proposed systematic search model was a piece-wise curvilinear function. Human search performance data from a visual search experiment fitted between the two search performance models. Interestingly, based on an analysis of interview data and search performance data, participants' search behavior changed during these exhaustive multiple-target search tasks. The models showed that they searched the search fields (1) at faster speed, (2) with shorter dwell time in a fixation, and (3) with less revisits in a fixation in the initial period of the search task than in the late period. Such a phenomenon was more evident in a multiple-target search task than in a single-target search task. It was also more evident in a multiple-target search task for different-type targets than in a multiple-target search task for targets of the same type. The second topic of this study was to derive an optimal stopping time model for a non-exhaustive search task containing multiple targets. Three usage strategies of the optimal stopping time were compared: a self-stopping strategy, an externally forced stopping strategy and a hybrid stopping strategy. The self-stopping strategy was the most effective among the three strategies under almost all task conditions of different time pressure and different pre-information on the number of targets (known and unknown number of targets). Such effectiveness of the self-stopping strategy could be caused by human observers' situation awareness ability and their use of decision cues.
机译:这项研究扩展了用于定位单个目标的模型和数据,以搜索用于定位多个目标的任务。多目标搜索任务可以分为两种类型。在详尽的视觉搜索任务中,观察者必须找到所有给定的目标,而在详尽的视觉搜索任务中,观察者必须选择何时停止搜索。这项研究的第一个主题是导出用于详尽的多目标搜索的人员绩效模型,然后对其进行验证。得出了详尽的搜索任务的随机和系统模型,这些模型有望描述人类搜索性能的上限和下限。所提出的随机搜索模型由一个次指数分布描述,而所提出的系统搜索模型是一个分段曲线函数。来自两个搜索性能模型之间的视觉搜索实验的人类搜索性能数据。有趣的是,基于对访谈数据和搜索绩效数据的分析,参与者在这些详尽的多目标搜索任务中的搜索行为发生了变化。模型显示,他们搜索速度快的搜索字段(1),(2)在注视中的停留时间较短,以及(3)在搜索任务的初始阶段与后期相比在注视中的重新访问次数少。这种现象在多目标搜索任务中比在单目标搜索任务中更为明显。在针对不同类型目标的多目标搜索任务中比在针对相同类型目标的多目标搜索任务中更明显。这项研究的第二个主题是为包含多个目标的非穷举搜索任务导出最佳停止时间模型。比较了最佳停止时间的三种使用策略:自动停止策略,外部强制停止策略和混合停止策略。在几乎所有任务条件不同,时间压力和目标数量(目标数量已知和未知)不同的所有条件下,自我停止策略是三种策略中最有效的。自停策略的这种有效性可能是由于人类观察者的态势感知能力及其对决策线索的使用所致。

著录项

  • 作者

    Hong, Seung-Kweon.;

  • 作者单位

    State University of New York at Buffalo.;

  • 授予单位 State University of New York at Buffalo.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 305 p.
  • 总页数 305
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;
  • 关键词

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