论文标题
通过协作完成和细分,通过离群值完成部分点云
Completing Partial Point Clouds with Outliers by Collaborative Completion and Segmentation
论文作者
论文摘要
大多数现有的点云完成方法仅适用于没有任何噪音和异常值的部分点云,这在实践中并不总是存在。我们在本文中提出了一个名为CS-NET的端到端网络,以完成噪音或包含异常值污染的点云。在我们的CS-NET中,完成和细分模块相互促进,从我们专门设计的级联结构中受益。借助细分,将更多干净的点云馈入完成模块。我们设计了一种新颖的完成解码器,该解码器利用通过分割与FPS获得的标签来纯化点云,并利用KNN组的标签来获得更好的生成。完成和细分模块的工作交替共享彼此的有用信息,以逐步提高预测质量。为了训练我们的网络,我们构建一个数据集,以模拟不完整点云包含异常值的真实情况。我们与最新完成方法的全面实验和比较证明了我们的优势。我们还将分割计划随后完成及其端到端融合进行比较,这也证明了我们的功效。
Most existing point cloud completion methods are only applicable to partial point clouds without any noises and outliers, which does not always hold in practice. We propose in this paper an end-to-end network, named CS-Net, to complete the point clouds contaminated by noises or containing outliers. In our CS-Net, the completion and segmentation modules work collaboratively to promote each other, benefited from our specifically designed cascaded structure. With the help of segmentation, more clean point cloud is fed into the completion module. We design a novel completion decoder which harnesses the labels obtained by segmentation together with FPS to purify the point cloud and leverages KNN-grouping for better generation. The completion and segmentation modules work alternately share the useful information from each other to gradually improve the quality of prediction. To train our network, we build a dataset to simulate the real case where incomplete point clouds contain outliers. Our comprehensive experiments and comparisons against state-of-the-art completion methods demonstrate our superiority. We also compare with the scheme of segmentation followed by completion and their end-to-end fusion, which also proves our efficacy.