WeakLabel3D-Net:弱监督多任务理解的真实场景激光雷达点云完整框架

Kangcheng Liu, Yuzhi Zhao, Z. Gao, Ben M. Chen
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引用次数: 21

摘要

现有的最先进的3D点云理解方法只有在完全监督的方式下才能表现良好。据我们所知,目前还没有统一的框架可以同时解决下游的高层次理解任务,尤其是在标签极其有限的情况下。这项工作提出了一个通用的和简单的框架来解决点云理解时,标签是有限的。提出了一种新的基于无监督区域展开的聚类生成方法。更重要的是,我们创新地提出了基于局部低层次几何属性相似度和学习到的由弱标签监督的高层次特征相似度来学习合并过分聚类的方法。因此,真正的弱标签引导伪标签合并,同时考虑几何和语义特征的相关性。最后,提出了自监督数据增强优化模块,用于指导场景中语义相似点之间的标签传播。实验结果表明,即使在有限的点被标记时,我们的框架在三个最重要的弱监督点云理解任务(包括语义分割、实例分割和目标检测)中也具有最好的性能。
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WeakLabel3D-Net: A Complete Framework for Real-Scene LiDAR Point Clouds Weakly Supervised Multi-Tasks Understanding
Existing state-of-the-art 3D point clouds understanding methods only perform well in a fully supervised manner. To the best of our knowledge, there exists no unified framework which simultaneously solves the downstream high-level understanding tasks, especially when labels are extremely limited. This work presents a general and simple framework to tackle point clouds understanding when labels are limited. We propose a novel unsupervised region expansion based clustering method for generating clusters. More importantly, we innovatively propose to learn to merge the over-divided clusters based on the local low-level geometric property similarities and the learned high-level feature similarities supervised by weak labels. Hence, the true weak labels guide pseudo labels merging taking both geometric and semantic feature correlations into consideration. Finally, the self-supervised data augmentation optimization module is proposed to guide the propagation of labels among semantically similar points within a scene. Experimental Results demonstrate that our framework has the best performance among the three most important weakly supervised point clouds understanding tasks including semantic segmentation, instance segmentation, and object detection even when limited points are labeled.
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