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如何选择交互式眼动追踪中感兴趣的面部区域大小。

How to choose the size of facial areas of interest in interactive eye tracking.

机构信息

Department of Psychology, Biological and Clinical Psychology, University of Trier, Trier, Germany.

出版信息

PLoS One. 2022 Feb 4;17(2):e0263594. doi: 10.1371/journal.pone.0263594. eCollection 2022.

Abstract

Advances in eye tracking technology have enabled the development of interactive experimental setups to study social attention. Since these setups differ substantially from the eye tracker manufacturer's test conditions, validation is essential with regard to the quality of gaze data and other factors potentially threatening the validity of this signal. In this study, we evaluated the impact of accuracy and areas of interest (AOIs) size on the classification of simulated gaze (fixation) data. We defined AOIs of different sizes using the Limited-Radius Voronoi-Tessellation (LRVT) method, and simulated gaze data for facial target points with varying accuracy. As hypothesized, we found that accuracy and AOI size had strong effects on gaze classification. In addition, these effects were not independent and differed in falsely classified gaze inside AOIs (Type I errors; false alarms) and falsely classified gaze outside the predefined AOIs (Type II errors; misses). Our results indicate that smaller AOIs generally minimize false classifications as long as accuracy is good enough. For studies with lower accuracy, Type II errors can still be compensated to some extent by using larger AOIs, but at the cost of more probable Type I errors. Proper estimation of accuracy is therefore essential for making informed decisions regarding the size of AOIs in eye tracking research.

摘要

眼动追踪技术的进步使得交互式实验设置得以开发,用于研究社会注意力。由于这些设置与眼动追踪器制造商的测试条件有很大的不同,因此验证对于注视数据的质量和其他可能威胁该信号有效性的因素至关重要。在这项研究中,我们评估了精度和感兴趣区域 (AOI) 大小对模拟注视 (注视) 数据分类的影响。我们使用有限半径 Voronoi 细分 (LRVT) 方法定义了不同大小的 AOI,并针对具有不同精度的面部目标点模拟了注视数据。正如假设的那样,我们发现精度和 AOI 大小对注视分类有很强的影响。此外,这些影响不是独立的,并且在 AOI 内的错误分类注视(I 类错误;假警报)和在预定义 AOI 外的错误分类注视(II 类错误;漏报)方面有所不同。我们的结果表明,只要精度足够好,较小的 AOI 通常可以最大限度地减少错误分类。对于精度较低的研究,通过使用较大的 AOI 可以在一定程度上补偿 II 类错误,但代价是更可能的 I 类错误。因此,对于眼动追踪研究中 AOI 大小的决策,正确估计精度至关重要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0054/8815978/a13cce9e0346/pone.0263594.g001.jpg

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