Feb. 6, 2024, 5:48 a.m. | Stefan Rhys Jeske Jonathan Klein Dominik L. Michels Jan Bender

cs.LG updates on arXiv.org arxiv.org

Neural shape representation generally refers to representing 3D geometry using neural networks, e.g., to compute a signed distance or occupancy value at a specific spatial position. In this paper, we present a novel encoder-decoder neural network for embedding 3D shapes in a single forward pass. Our architecture is based on a multi-scale hybrid system incorporating graph-based and voxel-based components, as well as a continuously differentiable decoder. Furthermore, the network is trained to solve the Eikonal equation and only requires knowledge …

architecture compute cs.gr cs.lg decoder embedding encoder encoder-decoder fields geometry hybrid network networks neural network neural networks novel paper representation scale set spatial value

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