Facial Expression Transfer from Video Via Deep Learning

Xiaojun Zeng, S. Dwarakanath, Wuyue Lu, Masaki Nakada, Demetri Terzopoulos
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Abstract

The transfer of facial expressions from people to 3D face models is a classic computer graphics problem. In this paper, we present a novel, learning-based approach to transferring facial expressions and head movements from images and videos to a biomechanical model of the face-head-neck musculoskeletal complex. Specifically, leveraging the Facial Action Coding System (FACS) as an intermediate representation of the expression space, we train a deep neural network to take in FACS Action Units (AUs) and output suitable facial muscle and jaw activations for the biomechanical model. Through biomechanical simulation, the activations deform the face, thereby transferring the expression to the model. The success of our approach is demonstrated through experiments involving the transfer of a range of expressive facial images and videos onto our biomechanical face-head-neck complex.
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通过深度学习从视频中转移面部表情
从人的面部表情到三维面部模型的转换是一个经典的计算机图形学问题。在本文中,我们提出了一种新颖的、基于学习的方法,将面部表情和头部运动从图像和视频转移到脸-头颈肌肉骨骼复合体的生物力学模型中。具体来说,利用面部动作编码系统(FACS)作为表达空间的中间表示,我们训练了一个深度神经网络来接受FACS动作单元(au),并为生物力学模型输出合适的面部肌肉和下颌激活。通过生物力学模拟,激活使面部变形,从而将表情传递给模型。我们的方法的成功是通过实验来证明的,实验包括将一系列富有表现力的面部图像和视频转移到我们的生物力学面部-头颈复合体上。
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