Data augmentation is an effective regularization strategy to alleviate the overfitting, which is an inherent drawback of the deep neural networks. However, data augmentation is rarely considered for point cloud processing despite many studies proposing various augmentation methods for image data. Actually, regularization is essential for point clouds since lack of generality is more likely to occur in point cloud due to small datasets. This paper proposes a Rigid Subset Mix (RSMix), a novel data augmentation method for point clouds that generates a virtual mixed sample by replacing part of the sample with shape-preserved subsets from another sample. RSMix preserves structural information of the point cloud sample by extracting subsets from each sample without deformation using a neighboring function. The neighboring function was carefully designed considering unique properties of point cloud, unordered structure and non-grid. Experiments verified that RSMix successfully regularized the deep neural networks with remarkable improvement for shape classification. We also analyzed various combinations of data augmentations including RSMix with single and multi-view evaluations, based on abundant ablation studies.
翻译:数据增强是一种有效的正规化战略,可以缓解超配,这是深神经网络固有的固有缺陷。然而,尽管许多研究提出了各种增强图像数据的方法,数据增强很少被考虑用于点云处理。事实上,数据增强对于点云至关重要,因为由于小数据集,缺乏普遍性更有可能在点云中发生。本文建议采用硬化子集(RSMix),这是对点云的一种新型数据增强方法,通过用另一样本中受形状保护的子集取代样本中的一部分样本,产生虚拟混合样本。RSMix保存了点云样本的结构信息,通过使用相邻功能从每个样本中提取子集而不进行畸形。邻功能对点云、无顺序结构和非网状的独特特性进行了仔细设计。实验证实,RSMix成功地对深神经网络进行了正规化,对形状分类作了显著改进。我们还根据大量反位研究,分析了各种数据增强组合,包括RSMix,对单一和多视图进行了评估。