This paper tackles the problem of parts-aware point cloud generation. Unlike existing works which require the point cloud to be segmented into parts a priori, our parts-aware editing and generation is performed in an unsupervised manner. We achieve this with a simple modification of the Variational Auto-Encoder which yields a joint model of the point cloud itself along with a schematic representation of it as a combination of shape primitives. In particular, we introduce a latent representation of the point cloud which can be decomposed into a disentangled representation for each part of the shape. These parts are in turn disentangled into both a shape primitive and a point cloud representation, along with a standardising transformation to a canonical coordinate system. The dependencies between our standardising transformations preserve the spatial dependencies between the parts in a manner which allows meaningful parts-aware point cloud generation and shape editing. In addition to the flexibility afforded by our disentangled representation, the inductive bias introduced by our joint modelling approach yields the state-of-the-art experimental results on the ShapeNet dataset.
翻译:本文解决了部分觉察到点云生成的问题。 与要求点云被分解成原状部分的现有工程不同, 我们的部分觉察到编辑和生成以不受监督的方式进行。 我们通过简单修改“ 动态自动编码器” 来做到这一点, 产生点云本身的联合模型, 并用图示来表示它作为形状原始的组合。 特别是, 我们引入了点云的潜在代表面, 它可以分解成形状每个部分的分解代表面。 这些部分反过来被分解成形状原始和点云的表达面, 并同时将标准转换成一个可控坐标坐标系统。 我们的标准转换之间的依赖性保持了点云本身的空间依赖性, 使部分觉察到点的云生成和形状的编辑变得有意义。 除了我们分解的表达面所赋予的灵活性外, 我们联合建模方法引入的诱导偏向偏向偏向偏向性偏向性偏向, 使得 ShapeNet 数据设置 上 的状态实验结果 。