论文标题
级联的精炼网络,用于自uppervision的点云完成
Cascaded Refinement Network for Point Cloud Completion with Self-supervision
论文作者
论文摘要
点云通常是稀疏且不完整的,这对现实世界应用造成了困难。现有的形状完成方法往往会产生粗糙的形状,而无需细粒度细节。考虑到这一点,我们引入了一个两分支网络以完成形状完成。第一个分支是级联的形状完成子网络,以合成完整的对象,我们建议在密集点重建过程中使用部分输入和粗输出,以保留对象细节。第二个分支是重建原始部分输入的自动编码器。这两个分支共享相同的功能提取器,以学习精确的全局功能以进行形状完成。此外,我们提出了两种策略,以便在没有地面真相数据时能够培训我们的网络。这是为了减轻现有方法对大量地面真相训练数据的依赖性,这些数据通常在现实世界中很难获得。此外,我们提出的策略还能够提高重建质量以进行全面监督的学习。我们以出色的表演来验证我们的自我监督,半监督和完全监督的设置的方法。不同数据集上的定量和定性结果表明,与点云完成任务上的最新方法相比,我们的方法实现了更现实的输出。
Point clouds are often sparse and incomplete, which imposes difficulties for real-world applications. Existing shape completion methods tend to generate rough shapes without fine-grained details. Considering this, we introduce a two-branch network for shape completion. The first branch is a cascaded shape completion sub-network to synthesize complete objects, where we propose to use the partial input together with the coarse output to preserve the object details during the dense point reconstruction. The second branch is an auto-encoder to reconstruct the original partial input. The two branches share a same feature extractor to learn an accurate global feature for shape completion. Furthermore, we propose two strategies to enable the training of our network when ground truth data are not available. This is to mitigate the dependence of existing approaches on large amounts of ground truth training data that are often difficult to obtain in real-world applications. Additionally, our proposed strategies are also able to improve the reconstruction quality for fully supervised learning. We verify our approach in self-supervised, semi-supervised and fully supervised settings with superior performances. Quantitative and qualitative results on different datasets demonstrate that our method achieves more realistic outputs than state-of-the-art approaches on the point cloud completion task.