With advances in deep learning model training strategies, the training of Point cloud classification methods is significantly improving. For example, PointNeXt, which adopts prominent training techniques and InvResNet layers into PointNet++, achieves over 7% improvement on the real-world ScanObjectNN dataset. However, most of these models use point coordinates features of neighborhood points mapped to higher dimensional space while ignoring the neighborhood point features computed before feeding to the network layers. In this paper, we revisit the PointNeXt model to study the usage and benefit of such neighborhood point features. We train and evaluate PointNeXt on ModelNet40 (synthetic), ScanObjectNN (real-world), and a recent large-scale, real-world grocery dataset, i.e., 3DGrocery100. In addition, we provide an additional inference strategy of weight averaging the top two checkpoints of PointNeXt to improve classification accuracy. Together with the abovementioned ideas, we gain 0.5%, 1%, 4.8%, 3.4%, and 1.6% overall accuracy on the PointNeXt model with real-world datasets, ScanObjectNN (hardest variant), 3DGrocery100's Apple10, Fruits, Vegetables, and Packages subsets, respectively. We also achieve a comparable 0.2% accuracy gain on ModelNet40.
翻译:随着深学习模式培训战略的进步,对点云分类方法的培训正在显著改善。例如,PointNeXt采用突出的培训技巧和InvResNet层进入PointNet+++,在现实世界ScanObjectNNN数据集方面实现了7%以上的改进。然而,这些模型大多使用向较高维度空间绘制的邻里点的点坐标特征,而忽略了输入网络层之前计算出的邻里点特征。在本文件中,我们重新审视了点NeXt模型,以研究这些邻里点特征的使用和好处。我们用模型Net40(合成)、ScanObjectNNNN(现实世界)培训和评价了PointNeXt,以及最近一个大规模、真实世界杂货数据集,即3DGrocery100。此外,我们提供了一种将PointNeXt点的两个顶端检查站平均重量的推断策略,以提高分类准确性。连同上述想法,我们获得了0.5、1%、4.8%、3.4%和1.6 %的点NegnetNetNetNetNet模型,我们也分别实现了真实世界模型、3ObnformacalGromals。