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Evaluating human visual search performance by Monte Carlo methods and heuristic model

机译:蒙特卡罗方法和启发式模型评估人类视觉搜索性能

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Visual search is an everyday activity that enables humans to explore the real world. Given the visual input, during a visual search, it''s required to select some aspects of the input in order to move to the next location. Exploration is guided by two factors: saliency of image (bottom-up) and endogenous mechanism (top-down). These two mechanisms interact to perform an efficient visual search. We developed a stochastic model, the “break away from fixations” (BAF), to emulate the visual search on a high cognitively demanding task such as a trail making test (TMT). The paper reports a case study providing evidence that human exploration performs an efficient visual search based also on an internal model of regions already explored.
机译:视觉搜索是使人类能够探索现实世界的日常活动。给定视觉输入,在视觉搜索期间,需要选择输入的某些方面才能移至下一个位置。探索受两个因素指导:图像的显着性(自下而上)和内生机制(自上而下)。这两种机制相互作用以执行有效的视觉搜索。我们开发了一个随机模型,即“脱离注视力”(BAF),以模拟视觉搜索,以完成对认知度要求很高的任务,例如试行测验(TMT)。该论文报告了一个案例研究,该证据提供了证据,即人类探索也基于已探索区域的内部模型来执行有效的视觉搜索。

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