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Papers/Generating 3D faces using Convolutional Mesh Autoencoders

Generating 3D faces using Convolutional Mesh Autoencoders

Anurag Ranjan, Timo Bolkart, Soubhik Sanyal, Michael J. Black

2018-07-26ECCV 2018 9Face Alignment3D Face ModellingFace Model
PaperPDFCodeCode(official)

Abstract

Learned 3D representations of human faces are useful for computer vision problems such as 3D face tracking and reconstruction from images, as well as graphics applications such as character generation and animation. Traditional models learn a latent representation of a face using linear subspaces or higher-order tensor generalizations. Due to this linearity, they can not capture extreme deformations and non-linear expressions. To address this, we introduce a versatile model that learns a non-linear representation of a face using spectral convolutions on a mesh surface. We introduce mesh sampling operations that enable a hierarchical mesh representation that captures non-linear variations in shape and expression at multiple scales within the model. In a variational setting, our model samples diverse realistic 3D faces from a multivariate Gaussian distribution. Our training data consists of 20,466 meshes of extreme expressions captured over 12 different subjects. Despite limited training data, our trained model outperforms state-of-the-art face models with 50% lower reconstruction error, while using 75% fewer parameters. We also show that, replacing the expression space of an existing state-of-the-art face model with our autoencoder, achieves a lower reconstruction error. Our data, model and code are available at http://github.com/anuragranj/coma

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingFaceScapeNME1.088CoMA
Face ReconstructionFaceScapeNME1.088CoMA
3DFaceScapeNME1.088CoMA
3D Face ModellingFaceScapeNME1.088CoMA
3D Face ReconstructionFaceScapeNME1.088CoMA

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