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Smooth pursuit detection in binocular eye-tracking data with automatic video-based performance evaluation

机译:基于自动视频性能评估的双眼眼动数据中的平滑追踪检测

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An increasing number of researchers record binocular eye-tracking signals from participants viewing moving stimuli, but the majority of event-detection algorithms are monocular and do not consider smooth pursuit movements. The purposes of the present study are to develop an algorithm that discriminates between fixations and smooth pursuit movements in binocular eye-tracking signals and to evaluate its performance using an automated video-based strategy. The proposed algorithm uses a clustering approach that takes both spatial and temporal aspects of the binocular eye-tracking signal into account, and is evaluated using a novel video-based evaluation strategy based on automatically detected moving objects in the video stimuli. The binocular algorithm detects 98% of fixations in image stimuli compared to 95% when only one eye is used, while for video stimuli, both the binocular and monocular algorithms detect around 40% of smooth pursuit movements. The present article shows that using binocular information for discrimination of fixations and smooth pursuit movements is advantageous in static stimuli, without impairing the algorithm's ability to detect smooth pursuit movements in video and moving-dot stimuli. With an automated evaluation strategy, time-consuming manual annotations are avoided and a larger amount of data can be used in the evaluation process.
机译:越来越多的研究人员从观看运动刺激的参与者那里记录双眼眼动信号,但是大多数事件检测算法都是单眼的,并且不考虑平滑的跟踪运动。本研究的目的是开发一种在双眼眼动信号中区分注视和平稳追赶运动的算法,并使用基于视频的自动策略评估其性能。所提出的算法使用一种聚类方法,该方法考虑了双眼眼跟踪信号的空间和时间方面,并基于视频刺激中自动检测到的运动对象,使用基于视频的新型评估策略对其进行了评估。双眼算法检测到图像刺激中的注视率为98%,而仅使用一只眼睛时为95%,而对于视频刺激,双目和单眼算法都检测到约40%的平滑追随运动。本文表明,使用双目信息来识别注视和平滑追踪运动在静态刺激中是有利的,而不会损害算法检测视频和移动点刺激中平滑追踪运动的能力。使用自动评估策略,可以避免耗时的手动注释,并且可以在评估过程中使用大量数据。

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