Biomechanics-Guided Facial Action Unit Detection Through Force Modeling

Zijun Cui, Chenyi Kuang, Tian Gao, Kartik Talamadupula, Qiang Ji
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引用次数: 1

Abstract

Existing AU detection algorithms are mainly based on appearance information extracted from 2D images, and well-established facial biomechanics that governs 3D facial skin deformation is rarely considered. In this paper, we propose a biomechanics-guided AU detection approach, where facial muscle activation forces are modelled and are employed to predict AU activation. Specifically, our model consists of two branches: 3D physics branch and 2D image branch. In 3D physics branch, we first derive the Euler-Lagrange equation governing facial deformation. The Euler-Lagrange equation represented as an ordinary differential equation (ODE) is embedded into a differentiable ODE solver. Muscle activation forces together with other physics parameters are firstly regressed, and then are utilized to simulate 3D deformation by solving the ODE. By leveraging facial biomechanics, we obtain physically plausible facial muscle activation forces. 2D image branch compensates 3D physics branch by employing additional appearance information from 2D images. Both estimated forces and appearance features are employed for AU detection. The proposed approach achieves competitive AU detection performance on two benchmark datasets. Furthermore, by leveraging biomechanics, our approach achieves outstanding performance with reduced training data.
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基于力建模的生物力学引导面部动作单元检测
现有的AU检测算法主要基于从2D图像中提取的外观信息,并且很少考虑控制3D面部皮肤变形的成熟面部生物力学。在本文中,我们提出了一种生物力学指导的AU检测方法,其中面部肌肉激活力建模并用于预测AU激活。具体来说,我们的模型包括两个分支:三维物理分支和二维图像分支。在三维物理分支中,我们首先推导了控制面部变形的欧拉-拉格朗日方程。将欧拉-拉格朗日方程表示为常微分方程(ODE),嵌入到可微ODE求解器中。首先回归肌肉激活力和其他物理参数,然后通过求解ODE来模拟三维变形。通过利用面部生物力学,我们获得了物理上可信的面部肌肉激活力。2D图像分支通过使用来自2D图像的附加外观信息来补偿3D物理分支。估计的力和外观特征都被用于AU检测。该方法在两个基准数据集上实现了具有竞争力的AU检测性能。此外,通过利用生物力学,我们的方法在减少训练数据的情况下实现了出色的性能。
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