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使用主动信息存储量化视觉扫描路径的可预测性。

Quantifying the Predictability of Visual Scanpaths Using Active Information Storage.

作者信息

Wollstadt Patricia, Hasenjäger Martina, Wiebel-Herboth Christiane B

机构信息

Honda Research Insitute Europe GmbH, Carl-Legien-Str. 30, 63073 Offenbach/Main, Germany.

出版信息

Entropy (Basel). 2021 Jan 29;23(2):167. doi: 10.3390/e23020167.

Abstract

Entropy-based measures are an important tool for studying human gaze behavior under various conditions. In particular, gaze transition entropy (GTE) is a popular method to quantify the predictability of a visual scanpath as the entropy of transitions between fixations and has been shown to correlate with changes in task demand or changes in observer state. Measuring scanpath predictability is thus a promising approach to identifying viewers' cognitive states in behavioral experiments or gaze-based applications. However, GTE does not account for temporal dependencies beyond two consecutive fixations and may thus underestimate the actual predictability of the current fixation given past gaze behavior. Instead, we propose to quantify scanpath predictability by estimating the active information storage (AIS), which can account for dependencies spanning multiple fixations. AIS is calculated as the mutual information between a processes' multivariate past state and its next value. It is thus able to measure how much information a sequence of past fixations provides about the next fixation, hence covering a longer temporal horizon. Applying the proposed approach, we were able to distinguish between induced observer states based on estimated AIS, providing first evidence that AIS may be used in the inference of user states to improve human-machine interaction.

摘要

基于熵的度量是研究各种条件下人类注视行为的重要工具。特别是,注视转移熵(GTE)是一种流行的方法,用于将视觉扫描路径的可预测性量化为注视之间转移的熵,并且已被证明与任务需求的变化或观察者状态的变化相关。因此,测量扫描路径的可预测性是在行为实验或基于注视的应用中识别观察者认知状态的一种有前景的方法。然而,GTE没有考虑超过两个连续注视的时间依赖性,因此可能会低估给定过去注视行为时当前注视的实际可预测性。相反,我们建议通过估计主动信息存储(AIS)来量化扫描路径的可预测性,AIS可以考虑跨越多个注视的依赖性。AIS计算为一个过程的多元过去状态与其下一个值之间的互信息。因此,它能够测量过去注视序列为下一个注视提供了多少信息,从而覆盖更长的时间范围。应用所提出的方法,我们能够基于估计的AIS区分诱导的观察者状态,这首次证明AIS可用于推断用户状态以改善人机交互。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8ebc/7912697/fd5c831c9f9c/entropy-23-00167-g001.jpg

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