Point cloud analysis is receiving increasing attention, however, most existing point cloud models lack the practical ability to deal with the unavoidable presence of unknown objects. This paper mainly discusses point cloud analysis under open-set settings, where we train the model without data from unknown classes and identify them in the inference stage. Basically, we propose to solve open-set point cloud analysis using a novel Point Cut-and-Mix mechanism consisting of Unknown-Point Simulator and Unknown-Point Estimator modules. Specifically, we use the Unknown-Point Simulator to simulate unknown data in the training stage by manipulating the geometric context of partial known data. Based on this, the Unknown-Point Estimator module learns to exploit the point cloud's feature context for discriminating the known and unknown data. Extensive experiments show the plausibility of open-set point cloud analysis and the effectiveness of our proposed solutions. Our code is available at \url{https://github.com/ShiQiu0419/pointcam}.
翻译:然而,大多数现有的点云分析正在受到越来越多的注意,但大多数现有点云模型缺乏处理无法避免的未知物体存在的实际能力。本文主要讨论在开放设置设置下进行的点云分析,即我们在没有未知类别数据的情况下对模型进行培训,并在推论阶段确定它们。基本上,我们提议使用由未知点模拟器和未知点模拟器模块组成的新型点切合混合机制解决开放设置点云分析问题。具体地说,我们利用未知点模拟器在培训阶段模拟未知数据,操纵部分已知数据的几何背景。基于此,未知点模拟器模块学习利用点云的特征环境来区分已知和未知的数据。广泛的实验显示开放点云分析的可取性和我们拟议解决方案的有效性。我们的代码可在以下网站查阅:<url{https://github.com/hiQi0419/pointcam}。