In this paper, we focus on latent modification and generation of 3D point cloud object models with respect to their semantic parts. Different to the existing methods which use separate networks for part generation and assembly, we propose a single end-to-end Autoencoder model that can handle generation and modification of both semantic parts, and global shapes. The proposed method supports part exchange between 3D point cloud models and composition by different parts to form new models by directly editing latent representations. This holistic approach does not need part-based training to learn part representations and does not introduce any extra loss besides the standard reconstruction loss. The experiments demonstrate the robustness of the proposed method with different object categories and varying number of points. The method can generate new models by integration of generative models such as GANs and VAEs and can work with unannotated point clouds by integration of a segmentation module.
翻译:在本文中,我们侧重于3D点云对象模型与其语义部分有关的潜在修改和生成。与目前使用不同网络进行部件生成和组装的方法不同,我们提议了一个单一端到端自动编码模型,可以处理语义部分和全球形状的生成和修改。拟议方法支持3D点云模型和不同部分构成之间的部分交换,以便通过直接编辑潜在表达形式形成新的模型。这一整体方法不需要部分培训来学习部分表述,而除了标准重建损失之外,不增加任何额外损失。实验显示了拟议方法的稳健性,不同对象类别和不同点数。该方法可以通过整合基因模型(如GANs和VAEs)来生成新的模型,并通过整合一个分解模块来与未加注点云合作。