面向精细网格学习的无图粗化变分自编码器

Nicolas Vercheval, H. Bie, A. Pižurica
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引用次数: 4

摘要

在本文中,我们提出了一种变分自编码器,能够从非常低维的潜在空间中正确地重建精细网格。该架构避免了通常的图粗化,在解码阶段依赖于池化层,在上采样阶段依赖于训练集的平均值。与以往的工作相比,我们选择了新的算子,特别是我们定义了一个新的Dirac算子,它可以扩展到不同类型的图结构数据。我们展示了对之前操作的改进,并将结果与Coma数据集上的当前基准进行了比较。
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Variational Auto-Encoders Without Graph Coarsening For Fine Mesh Learning
In this paper, we propose a Variational Auto-Encoder able to correctly reconstruct a fine mesh from a very low-dimensional latent space. The architecture avoids the usual coarsening of the graph and relies on pooling layers for the decoding phase and on the mean values of the training set for the up-sampling phase. We select new operators compared to previous work, and in particular, we define a new Dirac operator which can be extended to different types of graph structured data. We show the improvements over the previous operators and compare the results with the current benchmark on the Coma Dataset.
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