用多注视模式分析预测观察者的任务

Christopher Kanan, Nicholas A. Ray, D. Bseiso, J. Hsiao, G. Cottrell
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引用次数: 48

摘要

自从Yarbus在1965年的开创性工作以来,视觉科学家们一直认为,人们的眼球运动模式因任务而异。这表明我们可以仅从一个人的眼球运动推断出他的任务(或精神状态)。最近,Greene等人[2012]在一项类似yarbuss的复制研究中尝试了这一点;然而,他们无法成功地预测交给观察者的任务。我们重新分析了他们的数据,并表明,通过使用更强大的算法,可以预测观察者的任务。我们还使用我们的算法来推断观察者正在观看的图像及其身份。更一般地说,我们展示了如何使用机器学习的现成算法从观察者的眼球运动中进行推断,使用我们称为多注视模式分析(MFPA)的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting an observer's task using multi-fixation pattern analysis
Since Yarbus's seminal work in 1965, vision scientists have argued that people's eye movement patterns differ depending upon their task. This suggests that we may be able to infer a person's task (or mental state) from their eye movements alone. Recently, this was attempted by Greene et al. [2012] in a Yarbus-like replication study; however, they were unable to successfully predict the task given to their observer. We reanalyze their data, and show that by using more powerful algorithms it is possible to predict the observer's task. We also used our algorithms to infer the image being viewed by an observer and their identity. More generally, we show how off-the-shelf algorithms from machine learning can be used to make inferences from an observer's eye movements, using an approach we call Multi-Fixation Pattern Analysis (MFPA).
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