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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >On Learning 3D Face Morphable Model from In-the-Wild Images
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On Learning 3D Face Morphable Model from In-the-Wild Images

机译:从野外图像学习3D面部有线模型

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摘要

As a classic statistical model of 3D facial shape and albedo, 3D Morphable Model (3DMM) is widely used in facial analysis, e.g., model fitting, image synthesis. Conventional 3DMM is learned from a set of 3D face scans with associated well-controlled 2D face images, and represented by two sets of PCA basis functions. Due to the type and amount of training data, as well as, the linear bases, the representation power of 3DMM can be limited. To address these problems, this paper proposes an innovative framework to learn a nonlinear 3DMM model from a large set of in-the-wild face images, without collecting 3D face scans. Specifically, given a face image as input, a network encoder estimates the projection, lighting, shape and albedo parameters. Two decoders serve as the nonlinear 3DMM to map from the shape and albedo parameters to the 3D shape and albedo, respectively. With the projection parameter, lighting, 3D shape, and albedo, a novel analytically-differentiable rendering layer is designed to reconstruct the original input face. The entire network is end-to-end trainable with only weak supervision. We demonstrate the superior representation power of our nonlinear 3DMM over its linear counterpart, and its contribution to face alignment, 3D reconstruction, and face editing. Source code and additional results can be found at our project page: http://cvlab.cse.msu.edu/project-nonlinear-3dmm.html
机译:作为3D面部形状和Albedo的经典统计模型,3D可变模型(3DMM)广泛用于面部分析,例如模型拟合,图像合成。传统的3DMM从具有相关的良好控制的2D面部图像的一组3D面扫描学习,并由两组PCA基函数表示。由于训练数据的类型和量,以及线性基础,3DMM的表示功率可以限制。为了解决这些问题,本文提出了一种创新的框架,用于从大量的野外面部图像中学习非线性3DMM模型,而不会收集3D面部扫描。具体地,给定面部图像作为输入,网络编码器估计投影,照明,形状和反向参数。两个解码器分别用作非线性3DMM,分别从形状和反玻璃参数映射到3D形状和Albedo。利用投影参数,照明,3D形和反照孔,设计了一种新颖的分析可分解渲染层以重建原始输入面。整个网络是端到端的可训练,仅限弱监管。我们通过其线性对应物展示了我们非线性3DMM的优越代表性,以及其对面对对齐,3D重建和面部编辑的贡献。源代码和其他结果可以在我们的项目页面上找到:http://cvlab.cse.msu.edu/project-nonlinear-3dmm.html

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