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Learning Descriptor Networks for 3D Shape Synthesis and Analysis

机译:学习描述符网络3D形状合成和分析

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This paper proposes a 3D shape descriptor network, which is a deep convolutional energy-based model, for modeling volumetric shape patterns. The maximum likelihood training of the model follows an "analysis by synthesis" scheme and can be interpreted as a mode seeking and mode shifting process. The model can synthesize 3D shape patterns by sampling from the probability distribution via MCMC such as Langevin dynamics. The model can be used to train a 3D generator network via MCMC teaching. The conditional version of the 3D shape descriptor net can be used for 3D object recovery and 3D object super-resolution. Experiments demonstrate that the proposed model can generate realistic 3D shape patterns and can be useful for 3D shape analysis.
机译:本文提出了一种3D形状描述符网络,其是一种基于深度卷积的能量基础型模型,用于建模体积形状图案。该模型的最大似然训练遵循“通过合成的分析”方案,可以解释为一种模式寻求和模式移位过程。该模型可以通过通过MCMC的概率分布来对3D形状模式合成3D形状模式,例如Langevin Dynamics。该模型可用于通过MCMC教学训练3D发生器网络。 3D形状描述符NET的条件版本可用于3D对象恢复和3D对象超分辨率。实验表明,所提出的模型可以产生现实的3D形状图案,并且可用于3D形状分析。

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