Quantity-Quality Enhanced Self-Training Network for Weakly Supervised Point Cloud Semantic Segmentation

Jiacheng Deng;Jiahao Lu;Tianzhu Zhang
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Abstract

Point cloud semantic segmentation is essential for understanding 3D scenes. Contemporary techniques often require extensive annotated training data, yet obtaining point-wise annotations for point clouds is time-consuming and laborious. Recent developments in weakly supervised methods seek to mitigate this problem by generating pseudo-labels using limited annotations. However, these pseudo-labels frequently suffer from either insufficient quantity or inferior quality. To overcome these hurdles, we introduce a Quantity-Quality Enhanced Self-training Network for Weakly Supervised Point Cloud Semantic Segmentation (Q2E). Specifically, an image-assisted pseudo-label generator is proposed to exploit 2D images to extend pseudo-labels for point clouds. Additionally, a hierarchical pseudo-label optimizer is developed to refine the quality of the pseudo-labels by hierarchically grouping them into broader categories. Extensive experiments on the ScanNet-v2, S3DIS, Semantic3D, and SemanticKITTI datasets demonstrate that Q2E outperforms state-of-the-art weakly supervised methods and rivals fully supervised approaches for point cloud semantic segmentation. Remarkably, as of the initial submission on February 2, 2024, our method ranked the first place in various settings of the ScanNet-v2 benchmark.
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弱监督点云语义分割的数量-质量增强自训练网络
点云语义分割对于理解三维场景至关重要。当代技术通常需要大量带注释的训练数据,然而为点云获得逐点注释是费时费力的。弱监督方法的最新发展试图通过使用有限的注释生成伪标签来缓解这个问题。然而,这些伪标签往往存在数量不足或质量低劣的问题。为了克服这些障碍,我们引入了一个用于弱监督点云语义分割(Q2E)的数量-质量增强自训练网络。具体而言,提出了一种图像辅助伪标签生成器,用于利用二维图像扩展点云的伪标签。此外,还开发了一个分层伪标签优化器,通过分层地将伪标签分组到更广泛的类别中来改进伪标签的质量。在ScanNet-v2、S3DIS、Semantic3D和SemanticKITTI数据集上进行的大量实验表明,Q2E在点云语义分割方面优于最先进的弱监督方法,并可与完全监督方法相媲美。值得注意的是,截至2024年2月2日首次提交,我们的方法在ScanNet-v2基准的各种设置中排名第一。
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