In point cloud generation and completion, previous methods for transforming latent features to point clouds are generally based on fully connected layers (FC-based) or folding operations (Folding-based). However, point clouds generated by FC-based methods are usually troubled by outliers and rough surfaces. For folding-based methods, their data flow is large, convergence speed is slow, and they are also hard to handle the generation of non-smooth surfaces. In this work, we propose AXform, an attention-based method to transform latent features to point clouds. AXform first generates points in an interim space, using a fully connected layer. These interim points are then aggregated to generate the target point cloud. AXform takes both parameter sharing and data flow into account, which makes it has fewer outliers, fewer network parameters, and a faster convergence speed. The points generated by AXform do not have the strong 2-manifold constraint, which improves the generation of non-smooth surfaces. When AXform is expanded to multiple branches for local generations, the centripetal constraint makes it has properties of self-clustering and space consistency, which further enables unsupervised semantic segmentation. We also adopt this scheme and design AXformNet for point cloud completion. Considerable experiments on different datasets show that our methods achieve state-of-the-art results.
翻译:在点云的生成和完成中,以前将潜在特征转换为点云的方法通常基于完全相连的层(基于FC)或折叠操作(基于Folding)。然而,基于FC的方法产生的点云通常会受到外部和粗糙表面的困扰。对于折叠方法而言,其数据流是巨大的,汇合速度是缓慢的,而且它们也很难处理非悬浮表面的生成。在这项工作中,我们提出了AXform,一种将潜在特征转换为点云的以关注为基础的方法。AXform首先利用完全相连的层在临时空间中生成点。这些临时点会汇总以生成目标点云。AXform既考虑到参数共享和数据流,又考虑到参数流,从而使其外源较少,网络参数减少,而汇合速度更快。AXformorm产生的点没有很强的两维度制约,从而改进了非光谱表面表面的生成。当AXform格式扩展到多个分支时,三维天体的制约使得它具有生成目标云端云状和数据流流流流流的特性,从而展示了我们的Slodal-sal-smaxlation 并展示了我们的系统。