Articulated objects exist widely in the real world. However, previous 3D generative methods for unsupervised part decomposition are unsuitable for such objects, because they assume a spatially fixed part location, resulting in inconsistent part parsing. In this paper, we propose PPD (unsupervised Pose-aware Part Decomposition) to address a novel setting that explicitly targets man-made articulated objects with mechanical joints, considering the part poses. We show that category-common prior learning for both part shapes and poses facilitates the unsupervised learning of (1) part decomposition with non-primitive-based implicit representation, and (2) part pose as joint parameters under single-frame shape supervision. We evaluate our method on synthetic and real datasets, and we show that it outperforms previous works in consistent part parsing of the articulated objects based on comparable part pose estimation performance to the supervised baseline.
翻译:然而,先前的三维基因组分解方法不适合这些物体,因为它们假定一个空间固定部分位置,导致部分分解不一致。在本文中,我们提议PPD(不受监督的Pose-aware部分分解)处理一个新颖的设置,明确针对带有机械连接的人造分解物体,同时考虑到部分的构成。我们表明,两个部分的形状和成份先前的类别共同学习有助于不受监督地学习:(1) 部分分解与非基于原始的隐含表示;(2) 部分在单一框架形状的监督下作为联合参数构成。我们评估了我们在合成和真实数据集上的方法,我们表明,它比以前根据可比较部分对标定的物体进行一致的分解,使得估计的性能与受监督的基线相符。