Learning to look up: Realtime monocular gaze correction using machine learning

D. Kononenko, V. Lempitsky
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引用次数: 43

Abstract

We revisit the well-known problem of gaze correction and present a solution based on supervised machine learning. At training time, our system observes pairs of images, where each pair contains the face of the same person with a fixed angular difference in gaze direction. It then learns to synthesize the second image of a pair from the first one. After learning, the system gets the ability to redirect the gaze of a previously unseen person by the same angular difference as in the training set. Unlike many previous solutions to gaze problem in videoconferencing, ours is purely monocular, i.e. it does not require any hardware apart from an in-built web-camera of a laptop. Being based on efficient machine learning predictors such as decision forests, the system is fast (runs in real-time on a single core of a modern laptop). In the paper, we demonstrate results on a variety of videoconferencing frames and evaluate the method quantitatively on the hold-out set of registered images. The supplementary video shows example sessions of our system at work.
学习向上看:使用机器学习的实时单目凝视校正
我们重新审视了众所周知的凝视校正问题,并提出了一个基于监督机器学习的解决方案。在训练时,我们的系统观察成对的图像,其中每对图像都包含同一个人的面部,在注视方向上有固定的角度差异。然后,它学会从第一张图像合成第二张图像。在学习之后,系统获得了通过与训练集相同的角度差来重新定向先前未见过的人的目光的能力。与之前解决视频会议中凝视问题的方案不同,我们的方案是纯单目的,也就是说,除了笔记本电脑内置的网络摄像头外,它不需要任何硬件。该系统基于高效的机器学习预测器(如决策森林),速度很快(在现代笔记本电脑的单核上实时运行)。在本文中,我们在各种视频会议帧上展示了结果,并在配准图像的保留集上对该方法进行了定量评价。补充视频显示了我们的系统在工作中的示例会话。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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