Weakly supervised point cloud segmentation, i.e. semantically segmenting a point cloud with only a few labeled points in the whole 3D scene, is highly desirable due to the heavy burden of collecting abundant dense annotations for the model training. However, existing methods remain challenging to accurately segment 3D point clouds since limited annotated data may lead to insufficient guidance for label propagation to unlabeled data. Considering the smoothness-based methods have achieved promising progress, in this paper, we advocate applying the consistency constraint under various perturbations to effectively regularize unlabeled 3D points. Specifically, we propose a novel DAT (\textbf{D}ual \textbf{A}daptive \textbf{T}ransformations) model for weakly supervised point cloud segmentation, where the dual adaptive transformations are performed via an adversarial strategy at both point-level and region-level, aiming at enforcing the local and structural smoothness constraints on 3D point clouds. We evaluate our proposed DAT model with two popular backbones on the large-scale S3DIS and ScanNet-V2 datasets. Extensive experiments demonstrate that our model can effectively leverage the unlabeled 3D points and achieve significant performance gains on both datasets, setting new state-of-the-art performance for weakly supervised point cloud segmentation.
翻译:由于为模型培训收集大量密集说明的沉重负担,目前的方法对于准确分割3D点云来说仍然具有挑战性,因为有限的附加说明数据可能导致标签传播到无标签数据方面的指导不足。考虑到基于光滑性的方法已经取得了可喜的进展,在本文件中,我们主张在各种扰动性下应用一致性限制来有效规范未标3D点。具体地说,我们建议为低监管的3D点偏差收集一种新型DAT(textbf{D}tual\textbf{A}dapative dapf{Textbf{Transf{Transf{Transfansf)模型,因为有限的附加注释性数据可能会导致对标签传播到未标注数据的传播缺乏足够的指导。考虑到基于光滑度的方法已经取得了可喜的进展,我们主张在各种扰动性扰动性的3D点云下运用我们提议的DAT模型,在大规模S3DIS和扫描网络点上有两个受欢迎的主干网格模型。