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Automated Filtering of Eye Gaze Metrics from Dynamic Areas of Interest

机译:从感兴趣的动态区域自动过滤视线指标

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Eye-tracking experiments usually involves areas of interests (AOIs) for the analysis of eye gaze data as they could reveal potential cognitive load, and attentional patterns yielding interesting results about participants. While there are tools to define AOIs to extract eye movement data for the analysis of gaze measurements, they may require users to draw boundaries of AOIs on eye tracking stimuli manually or use markers to define AOIs in the space to generate AOI-mapped gaze locations. In this paper, we introduce a novel method to dynamically filter eye movement data from AOIs for the analysis of advanced eye gaze metrics. We incorporate pre-trained object detectors for offline detection of dynamic AOIs in dynamic eye-tracking stimuli such as video streams. We present our implementation and evaluation of object detectors to find the best object detector to be integrated in a real-time eye movement analysis pipeline to filter eye movement data that falls within the polygonal boundaries of detected dynamic AOIs. Our results indicate the utility of our method by applying it to a publicly available dataset.
机译:眼动追踪实验通常涉及感兴趣的区域(AOI),用于分析视线数据,因为它们可以揭示潜在的认知负荷,而注意力模式会产生有关参与者的有趣结果。尽管存在定义AOI的工具以提取用于分析凝视测量值的眼动数据,但它们可能需要用户在眼动追踪刺激上手动绘制AOI的边界或使用标记在空间中定义AOI来生成AOI映射的凝视位置。在本文中,我们介绍了一种从AOI动态过滤眼睛运动数据的新方法,用于分析高级眼睛凝视指标。我们并入了预训练的目标检测器,用于在动态眼动跟踪刺激(例如视频流)中离线检测动态AOI。我们介绍对象检测器的实现和评估,以找到要集成到实时眼动分析管道中的最佳对象检测器,以过滤落在检测到的动态AOI的多边形边界内的眼动数据。我们的结果通过将其应用于可公开获取的数据集来表明我们方法的实用性。

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