Quantifying Dwell Time With Location-based Augmented Reality: Dynamic AOI Analysis on Mobile Eye Tracking Data With Vision Transformer.

IF 1.3 4区 心理学 Q3 OPHTHALMOLOGY Journal of Eye Movement Research Pub Date : 2024-04-29 eCollection Date: 2024-01-01 DOI:10.16910/jemr.17.3.3
Julien Mercier, Olivier Ertz, Erwan Bocher
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Abstract

Mobile eye tracking captures egocentric vision and is well-suited for naturalistic studies. However, its data is noisy, especially when acquired outdoor with multiple participants over several sessions. Area of interest analysis on moving targets is difficult because A) camera and objects move nonlinearly and may disappear/reappear from the scene; and B) off-the-shelf analysis tools are limited to linearly moving objects. As a result, researchers resort to time-consuming manual annotation, which limits the use of mobile eye tracking in naturalistic studies. We introduce a method based on a fine-tuned Vision Transformer (ViT) model for classifying frames with overlaying gaze markers. After fine-tuning a model on a manually labelled training set made of 1.98% (=7845 frames) of our entire data for three epochs, our model reached 99.34% accuracy as evaluated on hold-out data. We used the method to quantify participants' dwell time on a tablet during the outdoor user test of a mobile augmented reality application for biodiversity education. We discuss the benefits and limitations of our approach and its potential to be applied to other contexts.

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利用基于位置的增强现实技术量化停留时间:利用 Vision Transformer 对移动眼球跟踪数据进行动态 AOI 分析。
移动眼动仪可捕捉以自我为中心的视觉,非常适合自然研究。然而,其数据噪声较大,尤其是在户外与多名参与者进行多个时段的数据采集时。对移动目标进行感兴趣区分析很困难,因为:A)摄像机和物体是非线性移动的,可能会从场景中消失或出现;B)现成的分析工具仅限于线性移动的物体。因此,研究人员不得不采用耗时的手动注释,这限制了移动眼动跟踪在自然研究中的应用。我们介绍了一种基于微调视觉变换器(ViT)模型的方法,用于对带有重叠注视标记的帧进行分类。在由全部数据的 1.98%(=7845 帧)组成的人工标注训练集上对模型进行三次历时微调后,我们的模型在保留数据上的评估准确率达到了 99.34%。在对生物多样性教育移动增强现实应用进行户外用户测试时,我们使用该方法量化了参与者在平板电脑上的停留时间。我们讨论了我们的方法的优点和局限性,以及将其应用于其他场合的潜力。
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来源期刊
CiteScore
2.90
自引率
33.30%
发文量
10
审稿时长
10 weeks
期刊介绍: The Journal of Eye Movement Research is an open-access, peer-reviewed scientific periodical devoted to all aspects of oculomotor functioning including methodology of eye recording, neurophysiological and cognitive models, attention, reading, as well as applications in neurology, ergonomy, media research and other areas,
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