Geometry encoding for numerical simulations

A Maleki, J Heyse, R Ranade, H He… - arXiv preprint arXiv …, 2021 - arxiv.org
arXiv preprint arXiv:2104.07792, 2021arxiv.org
We present a notion of geometry encoding suitable for machine learning-based numerical
simulation. In particular, we delineate how this notion of encoding is different than other
encoding algorithms commonly used in other disciplines such as computer vision and
computer graphics. We also present a model comprised of multiple neural networks
including a processor, a compressor and an evaluator. These parts each satisfy a particular
requirement of our encoding. We compare our encoding model with the analogous models …
We present a notion of geometry encoding suitable for machine learning-based numerical simulation. In particular, we delineate how this notion of encoding is different than other encoding algorithms commonly used in other disciplines such as computer vision and computer graphics. We also present a model comprised of multiple neural networks including a processor, a compressor and an evaluator.These parts each satisfy a particular requirement of our encoding. We compare our encoding model with the analogous models in the literature
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