Eye tracking is handled as one of the key technologies for applications that assess and evaluate human attention, behavior, and biometrics, especially using gaze, pupillary, and blink behaviors. One of the challenges with regard to the social acceptance of eye tracking technology is however the preserving of sensitive and personal information. To tackle this challenge, we employ a privacy-preserving framework based on randomized encoding to train a Support Vector Regression model using synthetic eye images privately to estimate the human gaze. During the computation, none of the parties learn about the data or the result that any other party has. Furthermore, the party that trains the model cannot reconstruct pupil, blinks or visual scanpath. The experimental results show that our privacy-preserving framework is capable of working in real-time, with the same accuracy as compared to non-private version and could be extended to other eye tracking related problems.
翻译:眼跟踪是评估和评估人类注意力、行为和生物鉴别学应用的关键技术之一,特别是使用眼神、学生和眨眼行为。社会接受眼跟踪技术的挑战之一是保护敏感和个人信息。为了应对这一挑战,我们使用一个基于随机编码的隐私保护框架,用合成眼睛图像私下对支持矢量递减模型进行个人估计。在计算过程中,没有任何当事方了解数据或任何其他当事方已有的结果。此外,培训模型的一方无法重建学生、眨眼或视觉扫描路。实验结果显示,我们的隐私保护框架能够实时工作,与非私人版本的精确度相同,可以扩大到其他与眼睛跟踪有关的问题。