PQ-NET: A Generative Part Seq2Seq Network for 3D Shapes

2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)(2020)

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摘要
We introduce PQ-NET, a deep neural network which represents and generates 3D shapes via sequential part assembly. The input to our network is a 3D shape segmented into parts, where each part is first encoded into a feature representation using a part autoencoder. The core component of PQ-NET is a sequence-to-sequence or Seq2Seq autoencoder which encodes a sequence of part features into a latent vector of fixed size, and the decoder reconstructs the 3D shape, one part at a time, resulting in a sequential assembly. The latent space formed by the Seq2Seq encoder encodes both part structure and fine part geometry. The decoder can be adapted to perform several generative tasks including shape autoencoding, interpolation, novel shape generation, and single-view 3D reconstruction, where the generated shapes are all composed of meaningful parts.
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关键词
interpolation,shape autoencoding,latent space,3D shape reconstruction,single-view 3D reconstruction,shape generation,generative tasks,part geometry,part structure,Seq2Seq encoder,sequential assembly,part features,Seq2Seq autoencoder,sequence-to-sequence autoencoder,part autoencoder,sequential part assembly,deep neural network,3D shape segmentation,generative part Seq2Seq network,PQ-NET
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