Neural 3D Morphable Models: Spiral Convolutional Networks for 3D Shape Representation Learning and Generation

05/08/2019
by   Giorgos Bouritsas, et al.
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Generative models for 3D geometric data arise in many important applications in 3D computer vision and graphics. In this paper, we focus on 3D deformable shapes that share a common topological structure, such as human faces and bodies. Morphable Models were among the first attempts to create compact representations for such shapes; despite their effectiveness and simplicity, such models have limited representation power due to their linear formulation. Recently, non-linear learnable methods have been proposed, although most of them resort to intermediate representations, such as 3D grids of voxels or 2D views. In this paper, we introduce a convolutional mesh autoencoder and a GAN architecture based on the spiral convolutional operator, acting directly on the mesh and leveraging its underlying geometric structure. We provide an analysis of our convolution operator and demonstrate state-of-the-art results on 3D shape datasets compared to the linear Morphable Model and the recently proposed COMA model.

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