Minimal sequential gaze models for inferring walkers' tasks

C. Rothkopf
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引用次数: 3

Abstract

Eye movements in extended sequential behavior are known to reflect task demands much more than low-level feature saliency. However, the more naturalistic the task is the more difficult it becomes to establish what cognitive processes a particular task elicits moment by moment. Here we ask the question, which sequential model is required to capture gaze sequences so that the ongoing task can be inferred reliably. Specifically, we consider eye movements of human subjects navigating a walkway while avoiding obstacles and approaching targets in a virtual environment. We show that Hidden-Markov Models, which have been used extensively in modeling human sequential behavior, can be augmented with few state variables describing the egocentric position of subjects relative to objects in the environment to dramatically increase successful classification of the ongoing task and to generate gaze sequences, that are very close to those observed in human subjects.
用于推断步行者任务的最小顺序凝视模型
众所周知,与低水平特征显著性相比,扩展顺序行为中的眼球运动更能反映任务需求。然而,任务越自然,就越难以确定一个特定任务在某一时刻引发了什么样的认知过程。在这里,我们提出了一个问题,需要哪种顺序模型来捕获凝视序列,以便可靠地推断正在进行的任务。具体来说,我们考虑了人类受试者在虚拟环境中避开障碍物和接近目标时在人行道上导航的眼球运动。我们发现,在人类序列行为建模中广泛使用的隐马尔可夫模型,可以用几个描述受试者相对于环境中物体的自我中心位置的状态变量来增强,从而显著提高对正在进行的任务的成功分类,并生成与人类受试者观察到的非常接近的注视序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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