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Learning Part Generation and Assembly for Structure-Aware Shape Synthesis

机译:用于结构感知形状合成的学习零件生成和组装

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Learning powerful deep generative models for 3D shape synthesis is largely hindered by the difficulty in ensuring plausibility encompassing correct topology and reasonable geometry. Indeed, learning the distribution of plausible 3D shapes seems a daunting task for the holistic approaches, given the significant topological variations of 3D objects even within the same category. Enlightened by the fact that 3D shape structure is characterized as part composition and placement, we propose to model 3D shape variations with a part-aware deep generative network, coined as PAGENet. The network is composed of an array of per-part VAE-GANs, generating semantic parts composing a complete shape, followed by a part assembly module that estimates a transformation for each part to correlate and assemble them into a plausible structure. Through delegating the learning of part composition and part placement into separate networks, the difficulty of modeling structural variations of 3D shapes is greatly reduced. We demonstrate through both qualitative and quantitative evaluations that PAGENet generates 3D shapes with plausible, diverse and detailed structure, and show two applications, i.e., semantic shape segmentation and part-based shape editing.
机译:学习用于3D形状合成的强大深度生成模型主要受阻于确保包括正确拓扑和合理几何形状的可符号性。实际上,在鉴于3D对象的显着拓扑变化甚至在同一类别内,学习合理的3D形状的分布似乎是一个艰巨的任务。通过3D形状结构作为零件成分和放置的事实,我们建议用部分感知深生成网络模拟3D形状变化,包括为pagenet。该网络由每个部分VAE-GANS的阵列组成,产生构成完整形状的语义部件,然后是零件组装模块,其估计每个部件的变换,以将它们与合理的结构相关联并将它们组装成符号结构。通过将部分组成和零件放置的学习委派到单独的网络中,大大减少了3D形状结构变化的难度。我们通过定性和定量评估来证明Pagenet产生3D形状,具有合理的,多样化和详细的结构,并显示两个应用,即语义形状分割和基于部分的形状编辑。

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