深度面部非刚性多视图立体

Ziqian Bai, Zhaopeng Cui, Jamal Ahmed Rahim, Xiaoming Liu, P. Tan
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引用次数: 45

摘要

提出了一种基于不同表情的多视图图像的三维人脸重建方法。我们从非刚性多视点立体(NRMVS)的角度来阐述这个问题。与以往基于学习的方法直接回归人脸形状不同,我们的方法通过显式强制多视图外观一致性来优化3D人脸形状,这在传统多视图立体方法中可以有效地恢复形状细节。此外,通过基于多视图一致性的优化估计脸型,我们的方法可以更好地泛化未知数据。然而,这种优化是具有挑战性的,因为每个输入图像都有不同的表达式。我们使用CNN网络来促进它,该网络根据输入图像和初步优化结果学习正则化非刚性3D面。大量的实验表明,我们的方法在各种数据集上都达到了最先进的性能,并且可以很好地推广到野外数据。
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Deep Facial Non-Rigid Multi-View Stereo
We present a method for 3D face reconstruction from multi-view images with different expressions. We formulate this problem from the perspective of non-rigid multi-view stereo (NRMVS). Unlike previous learning-based methods, which often regress the face shape directly, our method optimizes the 3D face shape by explicitly enforcing multi-view appearance consistency, which is known to be effective in recovering shape details according to conventional multi-view stereo methods. Furthermore, by estimating face shape through optimization based on multi-view consistency, our method can potentially have better generalization to unseen data. However, this optimization is challenging since each input image has a different expression. We facilitate it with a CNN network that learns to regularize the non-rigid 3D face according to the input image and preliminary optimization results. Extensive experiments show that our method achieves the state-of-the-art performance on various datasets and generalizes well to in-the-wild data.
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