基于特征点深度估计和形状变形的三维人脸重建

Quan Xiao, Lihua Han, Peizhong Liu
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引用次数: 9

摘要

由于人脸可以由具有较少冗余信息的几个特征点(FPs)来表示,并且可以通过少量原型人脸的线性组合来计算,因此我们提出了一种包含FP深度估计和形状变形的两步三维人脸重建方法。该方法可以从二维正面人脸图像中重建出逼真的三维人脸。首先,采用基于稀疏表示的耦合字典学习方法探索二维和三维训练FPs之间的底层映射,然后估计FPs的深度;在第二步中,提出了一种新的形状变形方法,通过估计的FPs组合少量最相关的变形人脸来重建三维人脸。由于人脸是由低维FPs表示的,并且其分布是由稀疏表示来描述的,因此该方法可以很好地探索二维和三维人脸的分布及其之间的底层映射。此外,它更加灵活,因为我们可以在任何步骤中进行任何更改。在BJUT_3D数据库上进行了大量实验,结果验证了该方法的有效性。
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3D Face Reconstruction via Feature Point Depth Estimation and Shape Deformation
Since a human face can be represented by a few feature points (FPs) with less redundant information, and calculated by a linear combination of a small number of prototypical faces, we propose a two-step 3D face reconstruction approach including FP depth estimation and shape deformation. The proposed approach can reconstruct a realistic 3D face from a 2D frontal face image. In the first step, a coupled dictionary learning method based on sparse representation is employed to explore the underlying mappings between 2D and 3D training FPs, and then the depth of the FPs is estimated. In the second step, a novel shape deformation method is proposed to reconstruct the 3D face by combining a small number of most relevant deformed faces by the estimated FPs. The proposed approach can explore the distributions of 2D and 3D faces and the underlying mappings between them well, because human faces are represented by low-dimensional FPs, and their distributions are described by sparse representations. Moreover, it is much more flexible since we can make any change in any step. Extensive experiments are conducted on BJUT_3D database, and the results validate the effectiveness of the proposed approach.
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