Barkevich Kevin, Bailey Reynold, Diaz Gabriel J
Rochester Institute of Technology, USA.
Proc ACM Comput Graph Interact Tech. 2024 May;7(2). doi: 10.1145/3654705. Epub 2024 May 17.
Algorithms for the estimation of gaze direction from mobile and video-based eye trackers typically involve tracking a feature of the eye that moves through the eye camera image in a way that covaries with the shifting gaze direction, such as the center or boundaries of the pupil. Tracking these features using traditional computer vision techniques can be difficult due to partial occlusion and environmental reflections. Although recent efforts to use machine learning (ML) for pupil tracking have demonstrated superior results when evaluated using standard measures of segmentation performance, little is known of how these networks may affect the quality of the final gaze estimate. This work provides an objective assessment of the impact of several contemporary ML-based methods for eye feature tracking when the subsequent gaze estimate is produced using either feature-based or model-based methods. Metrics include the accuracy and precision of the gaze estimate, as well as drop-out rate.
用于从移动和基于视频的眼动仪估计注视方向的算法通常涉及跟踪眼睛的一个特征,该特征在眼睛摄像头图像中以与注视方向变化相关的方式移动,例如瞳孔的中心或边界。由于部分遮挡和环境反射,使用传统计算机视觉技术跟踪这些特征可能很困难。尽管最近使用机器学习(ML)进行瞳孔跟踪的努力在使用标准分割性能度量进行评估时已显示出优异的结果,但对于这些网络如何影响最终注视估计的质量却知之甚少。这项工作对几种当代基于ML的眼睛特征跟踪方法在随后使用基于特征或基于模型的方法产生注视估计时的影响进行了客观评估。度量标准包括注视估计的准确性和精确性,以及辍学率。