Even though 3D face reconstruction has achieved impressive progress, most orthogonal projection-based face reconstruction methods can not achieve accurate and consistent reconstruction results when the face is very close to the camera due to the distortion under the perspective projection. In this paper, we propose to simultaneously reconstruct 3D face mesh in the world space and predict 2D face landmarks on the image plane to address the problem of perspective 3D face reconstruction. Based on the predicted 3D vertices and 2D landmarks, the 6DoF (6 Degrees of Freedom) face pose can be easily estimated by the PnP solver to represent perspective projection. Our approach achieves 1st place on the leader-board of the ECCV 2022 WCPA challenge and our model is visually robust under different identities, expressions and poses. The training code and models are released to facilitate future research.
翻译:尽管3D面部重建取得了令人印象深刻的进展,但大多数以正统预测为基础的面部重建方法无法取得准确和一致的重建结果,因为由于前景预测的扭曲,脸部与镜头非常接近。在本文中,我们提议同时重建世界空间的3D面部网块,并预测图像平面上的2D面部里程碑,以解决3D面部重建的前景问题。根据预测的3D顶部和2D标志,6DoF面部(6度自由)面部面部面部可以很容易地由PnP求解解(PnP)来代表前景预测。我们的方法在ECCV 2022 WCPA挑战的领头板上取得了第一位置,我们的模型在不同的身份、表达方式和形式下具有视觉上的强健。为了便利未来的研究,发布了培训守则和模式。