Point cloud segmentation is a fundamental task in 3D. Despite recent progress on point cloud segmentation with the power of deep networks, current learning methods based on the clean label assumptions may fail with noisy labels. Yet, class labels are often mislabeled at both instance-level and boundary-level in real-world datasets. In this work, we take the lead in solving the instance-level label noise by proposing a Point Noise-Adaptive Learning (PNAL) framework. Compared to noise-robust methods on image tasks, our framework is noise-rate blind, to cope with the spatially variant noise rate specific to point clouds. Specifically, we propose a point-wise confidence selection to obtain reliable labels from the historical predictions of each point. A cluster-wise label correction is proposed with a voting strategy to generate the best possible label by considering the neighbor correlations. To handle boundary-level label noise, we also propose a variant ``PNAL-boundary " with a progressive boundary label cleaning strategy. Extensive experiments demonstrate its effectiveness on both synthetic and real-world noisy datasets. Even with $60\%$ symmetric noise and high-level boundary noise, our framework significantly outperforms its baselines, and is comparable to the upper bound trained on completely clean data. Moreover, we cleaned the popular real-world dataset ScanNetV2 for rigorous experiment. Our code and data is available at https://github.com/pleaseconnectwifi/PNAL.
翻译:3D 中, 云层分割是一项基本任务 3D 中, 云层分割是一项基本任务 。 尽管在点云分割方面最近取得了进步, 深层网络的力量也有所增强, 目前基于清洁标签假设的学习方法可能因杂乱标签而失败 。 然而, 在真实世界的数据集中, 类标签往往在实例级别和边界级别上被误贴标签 。 在这项工作中, 我们率先解决实例级标签的噪音。 与图像任务的噪声- 自动学习( PNAL) 框架相比, 我们的框架是噪音率盲目的, 以应对具体针对点云层的空间变异噪音率。 具体地说, 我们提出一个点对信任度的选择选择, 以便从每个点的历史预测中获得可靠的标签。 以群集为方向的标签更正策略, 通过考虑相邻关系来生成最佳的标签 。 为了处理边界等级标签的噪音, 我们还提出一个具有渐进性边界标签清理策略的变体 。 广泛实验表明, 合成和真实世界的保热度数据集 。 即使有60美元, 和经过严格对比度数据,, 我们的精确度数据 。