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首页> 外文期刊>ACM Transactions on Graphics >SAGNet: Structure-aware Generative Network for 3D-Shape Modeling
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SAGNet: Structure-aware Generative Network for 3D-Shape Modeling

机译:SAGNet:用于3D形状建模的结构感知生成网络

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摘要

We present SAGNet, a structure-aware generative model for 3D shapes. Given a set of segmented objects of a certain class, the geometry of their parts and the pairwise relationships between them (the structure) are jointly learned and embedded in a latent space by an autoencoder. The encoder intertwines the geometry and structure features into a single latent code, while the decoder disentangles the features and reconstructs the geometry and structure of the 3D model. Our autoencoder consists of two branches, one for the structure and one for the geometry. The key idea is that during the analysis, the two branches exchange information between them, thereby learning the dependencies between structure and geometry and encoding two augmented features, which are then fused into a single latent code. This explicit intertwining of information enables separately controlling the geometry and the structure of the generated models. We evaluate the performance of our method and conduct an ablation study. We explicitly show that encoding of shapes accounts for both similarities in structure and geometry. A variety of quality results generated by SAGNet are presented.
机译:我们介绍了SAGNet,这是一种用于3D形状的结构感知生成模型。给定一组特定类别的分段对象,它们的零件的几何形状以及它们之间的成对关系(结构)可以通过自动编码器共同学习并嵌入到潜在空间中。编码器将几何和结构特征交织为单个潜在代码,而解码器解开特征并重建3D模型的几何和结构。我们的自动编码器包含两个分支,一个分支用于结构,一个分支用于几何。关键思想是,在分析过程中,两个分支之间会交换信息,从而了解结构与几何之间的依存关系,并对两个增强特征进行编码,然后将其融合为一个潜在代码。信息的这种显式交织使得能够分别控制所生成模型的几何形状和结构。我们评估我们方法的性能并进行消融研究。我们明确表明,形状编码说明了结构和几何形状的相似性。提出了SAGNet生成的各种质量结果。

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