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Scanpath modeling and classification with hidden Markov models

机译:隐马尔可夫模型的扫描路径建模和分类

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摘要

How people look at visual information reveals fundamental information about them; their interests and their states of mind. Previous studies showed that scanpath, i.e., the sequence of eye movements made by an observer exploring a visual stimulus, can be used to infer observer-related (e.g., task at hand) and stimuli-related (e.g., image semantic category) information. However, eye movements are complex signals and many of these studies rely on limited gaze descriptors and bespoke datasets. Here, we provide a turnkey method for scanpath modeling and classification. This method relies on variational hidden Markov models (HMMs) and discriminant analysis (DA). HMMs encapsulate the dynamic and individualistic dimensions of gaze behavior, allowing DA to capture systematic patterns diagnostic of a given class of observers and/or stimuli. We test our approach on two very different datasets. Firstly, we use fixations recorded while viewing 800 static natural scene images, and infer an observer-related characteristic: the task at hand. We achieve an average of 55.9% correct classification rate (chance = 33%). We show that correct classification rates positively correlate with the number of salient regions present in the stimuli. Secondly, we use eye positions recorded while viewing 15 conversational videos, and infer a stimulus-related characteristic: the presence or absence of original soundtrack. We achieve an average 81.2% correct classification rate (chance = 50%). HMMs allow to integrate bottom-up, top-down, and oculomotor influences into a single model of gaze behavior. This synergistic approach between behavior and machine learning will open new avenues for simple quantification of gazing behavior. We release SMAC with HMM, a Matlab toolbox freely available to the community under an open-source license agreement.
机译:人们如何看待视觉信息揭示了有关视觉信息的基本信息;他们的兴趣和心态。先前的研究表明,扫描路径(即观察者探索视觉刺激而进行的眼球运动顺序)可用于推断与观察者相关的信息(例如手头的任务)和与刺激相关的信息(例如图像语义类别)。但是,眼球运动是复杂的信号,许多此类研究依赖于有限的凝视描述符和定制数据集。在这里,我们提供了一种用于扫描路径建模和分类的交钥匙方法。该方法依赖于变分隐式马尔可夫模型(HMM)和判别分析(DA)。 HMM封装了凝视行为的动态和个人主义维度,从而允许DA捕获对给定类别的观察者和/或刺激进行诊断的系统模式。我们在两个截然不同的数据集上测试了我们的方法。首先,我们使用在观看800张静态自然场景图像时记录的注视,并推断出与观察者相关的特征:手头的任务。我们获得了平均55.9%的正确分类率(机会= 33%)。我们显示正确的分类率与刺激中存在的显着区域的数量成正相关。其次,我们使用观看15个对话视频时记录的眼位,并推断出与刺激有关的特征:是否存在原始声带。我们获得了平均81.2%的正确分类率(机会= 50%)。 HMM允许将自下而上,自上而下和动眼神经的影响整合到一个单独的凝视行为模型中。行为与机器学习之间的这种协同方法将为凝视行为的简单量化开辟新的途径。我们发布了带有HMM的SMAC,HMM是一个Matlab工具箱,根据开源许可协议免费提供给社区。

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