基于头部姿态和三维面部地标的人脸二维到三维重构网络

Yuanquan Xu, Cheolkon Jung
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引用次数: 0

摘要

虽然现有的基于三维可移动模型(3DMM)的训练方法大多需要带注释的参数作为基础真值,但只有少数数据集包含这些参数。此外,由于尺寸上的差距,难以获得与输入图像对齐的精确三维人脸模型。本文提出了一种基于头部姿态和三维面部地标的人脸二维到三维重建网络。我们构建了一个头部姿态引导下的人脸重建网络,利用三维人脸地标回归精确的三维人脸模型。与3DMM参数不同的是,即使在野生图像中,头部姿态和3D面部地标也能成功估计。在300W-LP、AFLW2000-3D和CelebA HQ数据集上进行的实验表明,该方法利用三维面部地标成功地从单幅RGB图像重建三维人脸模型,并在归一化平均误差(NME)方面达到了最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face 2D to 3D Reconstruction Network Based on Head Pose and 3D Facial Landmarks
Although most existing methods based on 3D mor-phable model (3DMM) need annotated parameters for training as ground truth, only a few datasets contain them. Moreover, it is difficult to acquire accurate 3D face models aligned with the input images due to the gap in dimensions. In this paper, we propose a face 2D to 3D reconstruction network based on head pose and 3D facial landmarks. We build a head pose guided face reconstruction network to regress an accurate 3D face model with the help of 3D facial landmarks. Different from 3DMM parameters, head pose and 3D facial landmarks are successfully estimated even in the wild images. Experiments on 300W-LP, AFLW2000-3D and CelebA HQ datasets show that the proposed method successfully reconstructs 3D face model from a single RGB image thanks to 3D facial landmarks as well as achieves state-of-the-art performance in terms of the normalized mean error (NME).
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