Light-scattering reconstruction of transparent shapes using neural networks

arXiv (Cornell University)(2023)

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摘要
We propose a cheap non-intrusive high-resolution method of visualising transparent or translucent objects which may translate, rotate and shapeshift. We propose a method of reconstructing a strongly deformed time-evolving surface from a time-series of noisy clouds of points using a lightweight neural network. We benchmark the method against three different geometries and varying levels of noise and find that the Gaussian curvature is accurately recovered when the noise level is below $2\%$ of the diameter of the surface and the data from distinct regions of the surface do not overlap.
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关键词
transparent shapes,neural
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