移动设备的高帧率眼动追踪框架

Yuhu Chang, Changyang He, Yingying Zhao, T. Lu, Ning Gu
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引用次数: 1

摘要

注视屏幕追踪是一种基于外表的眼球追踪任务,近年来引起了人们的极大兴趣。虽然已有基于学习的高精度眼动追踪方法,但基于神经网络的深度模型预训练复杂、计算量大,限制了其在移动设备上的适用性。此外,随着移动设备的显示帧率稳步提高到120fps,高帧率眼动追踪变得越来越具有挑战性。在这项工作中,我们解决了跟踪效率的挑战,并引入了GazeHFR,一种专门用于移动设备的生物灵感眼动追踪模型,提供了高精度和高效率。具体来说,GazeHFR将眼球运动分为扫视和平滑追求两个不同的阶段,并利用帧间运动信息结合针对每个运动阶段量身定制的轻量级学习模型,在不影响准确性的情况下实现高效的眼动追踪。与现有技术相比,Gaze-HFR在移动设备上实现了大约7倍的加速和15%的精度提高。
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A High-Frame-Rate Eye-Tracking Framework for Mobile Devices
Gaze-on-screen tracking, an appearance-based eye-tracking task, has drawn significant interest in recent years. While learning-based high-precision eye-tracking methods have been designed in the past, the complex pre-training and high computation in neural network-based deep models restrict their applicability in mobile devices. Moreover, as the display frame rate of mobile devices has steadily increased to 120 fps, high-frame-rate eye tracking becomes increasingly challenging. In this work, we tackle the tracking efficiency challenge and introduce GazeHFR, a biologic-inspired eye-tracking model specialized for mobile devices, offering both high accuracy and efficiency. Specifically, GazeHFR classifies the eye movement into two distinct phases, i.e., saccade and smooth pursuit, and leverages inter-frame motion information combined with lightweight learning models tailored to each movement phase to deliver high-efficient eye tracking without affecting accuracy. Compared to prior art, Gaze-HFR achieves approximately 7x speedup and 15% accuracy improvement on mobile devices.
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