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Wavelet Method for Automatic Detection of Eye-Movement Behaviors

机译:用于自动检测眼球运动行为的小波法

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摘要

With the rapid development of eye tracking technology, eye movements have become more and more important in human-computer interaction. Generally, eye movements are classified into fixation, saccade, and smooth pursuit. Since the eye movements are natural and fast, contain important cues for human cognitive state and visual attention, the eye movement behaviors are difficult to detect and classify. In this paper, the novel eye-movement data filtering and eye-movement classification algorithm are proposed. The nonlinear wavelet threshold denoising method was used to smooth the eye-movement data and detect saccades in the presence of smooth pursuit movements, according to different eye-movement behaviors related to the different characteristics of wavelet detail coefficients. Experiments were conducted to compare the eye-movement signal analyzing algorithm based on wavelet with other algorithms. The results showed that the eye-movement data filtering algorithm based on wavelet performed better than the other eye-movement filters. Moreover, the classification algorithm based on wavelet can classify different eye-movement behaviors more accurately. Then, we used an eye tracking technology to record and analyze the user's eye movement during the test, so as to get the user's psychological and cognitive state.
机译:随着眼跟踪技术的快速发展,眼球运动在人机互动中变得越来越重要。通常,眼部运动被分为固定,扫视和平滑追踪。由于眼睛运动自然而快速,包含人类认知状态和视觉注意的重要提示,眼球运动行为难以检测和分类。本文提出了一种新型的眼球运动数据滤波和眼球运动分类算法。根据与小波细节系数的不同特征有关的不同的眼球运动行为,非线性小波阈值去噪方法用于平滑眼球运动数据并检测光滑的追踪运动中的扫视。进行实验以比较基于小波与其他算法的眼动信号分析算法。结果表明,基于小波的眼球移动数据滤波算法比其他眼动滤波器更好。此外,基于小波的分类算法可以更准确地对不同的眼球运动行为进行分类。然后,我们使用眼睛跟踪技术来记录和分析测试期间的眼睛运动,从而获得用户的心理和认知状态。

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