Feb. 13, 2024, 5:44 a.m. | Doyub Kim Minjae Lee Ken Museth

cs.LG updates on arXiv.org arxiv.org

We introduce NeuralVDB, which improves on an existing industry standard for efficient storage of sparse volumetric data, denoted VDB [Museth 2013], by leveraging recent advancements in machine learning. Our novel hybrid data structure can reduce the memory footprints of VDB volumes by orders of magnitude, while maintaining its flexibility and only incurring small (user-controlled) compression errors. Specifically, NeuralVDB replaces the lower nodes of a shallow and wide VDB tree structure with multiple hierarchical neural networks that separately encode topology and …

cs.cv cs.gr cs.lg data flexibility hierarchical hybrid industry machine machine learning memory networks neural networks novel orders reduce representation standard storage

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