We propose a fully automatic annotation scheme which takes a raw 3D point cloud with a set of fitted CAD models as input, and outputs convincing point-wise labels which can be used as cheap training data for point cloud segmentation. Compared to manual annotations, we show that our automatic labels are accurate while drastically reducing the annotation time, and eliminating the need for manual intervention or dataset-specific parameters. Our labeling pipeline outputs semantic classes and soft point-wise object scores which can either be binarized into standard one-hot-encoded labels, thresholded into weak labels with ambiguous points left unlabeled, or used directly as soft labels during training. We evaluate the label quality and segmentation performance of PointNet++ on a dataset of real industrial point clouds and Scan2CAD, a public dataset of indoor scenes. Our results indicate that reducing supervision in areas which are more difficult to label automatically is beneficial, compared to the conventional approach of naively assigning a hard "best guess" label to every point.
翻译:我们提出了一种完全自动的注释方案,它以带有一组安装的CAD模型的原始三维点云作为输入,并输出令人信服的逐点标签,这些逐点标签可以用作点云分割的廉价训练数据。与手动注释相比,我们展示了我们的自动标签是准确的,同时大大减少了注释时间,并消除了手动干预或数据集特定参数的需要。我们的标注流水线输出语义类别和软点状物得分,这些可以被二进制化为标准的One-Hot编码标签,被阈值化为弱标签,其中模棱两可的点保留未标记,或在训练期间直接用作软标签。我们在真实工业点云数据集和公共室内场景数据集Scan2CAD上评估了PointNet ++的标签质量和分割性能。我们的结果表明,在自动标注困难的区域中减少监督比传统方法Naively分配硬“最佳猜测”标签到每个点更有益。