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Pvdeconv: Point-Voxel Deconvolution for Autoencoding CAD Construction in 3D

机译:Pvdeconv:用于自动编码3D CAD构造的点体素反卷积

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We propose a Point-Voxel DeConvolution (PVDeConv) module for 3D data autoencoder. To demonstrate its efficiency we learn to synthesize high-resolution point clouds of 10k points that densely describe the underlying geometry of Computer Aided Design (CAD) models. Scanning artifacts, such as protrusions, missing parts, smoothed edges and holes, inevitably appear in real 3D scans of fabricated CAD objects. Learning the original CAD model construction from a 3D scan requires a ground truth to be available together with the corresponding 3D scan of an object. To solve the gap, we introduce a new dedicated dataset, the CC3D, containing 50k+ pairs of CAD models and their corresponding 3D meshes. This dataset is used to learn a convolutional autoencoder for point clouds sampled from the pairs of 3D scans - CAD models. The challenges of this new dataset are demonstrated in comparison with other generative point cloud sampling models trained on ShapeNet. The CC3D autoencoder is efficient with respect to memory consumption and training time as compared to stateof-the-art models for 3D data generation.
机译:我们提出了一种用于3D数据自动编码器的Point-Voxel反卷积(PVDeConv)模块。为了证明其效率,我们学习了合成1万个点的高分辨率点云,这些点云密集地描述了计算机辅助设计(CAD)模型的基本几何形状。扫描假象,例如突起,缺失部分,平滑的边缘和孔洞,不可避免地出现在对制成的CAD对象进行的真实3D扫描中。从3D扫描中学习原始CAD模型构造需要具备地面真实性,以及与对象的相应3D扫描一起使用。为了解决这一差距,我们引入了一个新的专用数据集CC3D,其中包含50k +对CAD模型及其对应的3D网格。此数据集用于学习从3D扫描对-CAD模型中采样的点云的卷积自动编码器。与在ShapeNet上训练的其他生成点云采样模型相比,该新数据集所面临的挑战得到了证明。与3D数据生成的最新模型相比,CC3D自动编码器在内存消耗和训练时间方面是高效的。

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