LEyes:一个轻量级框架,用于使用合成眼睛图像进行深度学习的眼动追踪。

IF 3.9 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Behavior Research Methods Pub Date : 2025-03-31 DOI:10.3758/s13428-025-02645-y
Sean Anthony Byrne, Virmarie Maquiling, Marcus Nyström, Enkelejda Kasneci, Diederick C Niehorster
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引用次数: 0

摘要

深度学习方法极大地推动了注视估计领域的发展,但这些算法的发展往往受到缺乏适当的公开可访问的训练数据集的阻碍。此外,由于硬件和受试者之间的生物多样性差异,在少数可用数据集上训练的模型往往不能推广到新的数据集。为了缓解这些挑战,研究界经常转向合成数据集,尽管这种方法也有缺点,例如创建用于训练数据的逼真眼睛图像表示的计算资源和劳动密集型性质。作为回应,我们引入了“光眼”(LEyes),这是一个与传统的真实感方法不同的新框架,它利用简单的合成图像生成器来训练神经网络,以检测瞳孔和角膜反射等关键图像特征,与传统的真实感方法不同。LEyes有助于在飞行中生成合成数据,可适应任何记录设备,并提高训练神经网络的效率,用于广泛的注视估计任务。目前的评估表明,在许多情况下,LEyes在准确识别和定位不同数据集的瞳孔和角膜反射方面优于现有的方法。此外,使用LEyes数据训练的模型优于标准眼动仪,同时采用更具成本效益的硬件,为克服当前注视估计技术的局限性提供了一条有前途的途径。
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LEyes: A lightweight framework for deep learning-based eye tracking using synthetic eye images.

Deep learning methods have significantly advanced the field of gaze estimation, yet the development of these algorithms is often hindered by a lack of appropriate publicly accessible training datasets. Moreover, models trained on the few available datasets often fail to generalize to new datasets due to both discrepancies in hardware and biological diversity among subjects. To mitigate these challenges, the research community has frequently turned to synthetic datasets, although this approach also has drawbacks, such as the computational resource and labor-intensive nature of creating photorealistic representations of eye images to be used as training data. In response, we introduce "Light Eyes" (LEyes), a novel framework that diverges from traditional photorealistic methods by utilizing simple synthetic image generators to train neural networks for detecting key image features like pupils and corneal reflections, diverging from traditional photorealistic approaches. LEyes facilitates the generation of synthetic data on the fly that is adaptable to any recording device and enhances the efficiency of training neural networks for a wide range of gaze-estimation tasks. Presented evaluations show that LEyes, in many cases, outperforms existing methods in accurately identifying and localizing pupils and corneal reflections across diverse datasets. Additionally, models trained using LEyes data outperform standard eye trackers while employing more cost-effective hardware, offering a promising avenue to overcome the current limitations in gaze estimation technology.

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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
期刊最新文献
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