Point cloud segmentation is fundamental in understanding 3D environments. However, current 3D point cloud segmentation methods usually perform poorly on scene boundaries, which degenerates the overall segmentation performance. In this paper, we focus on the segmentation of scene boundaries. Accordingly, we first explore metrics to evaluate the segmentation performance on scene boundaries. To address the unsatisfactory performance on boundaries, we then propose a novel contrastive boundary learning (CBL) framework for point cloud segmentation. Specifically, the proposed CBL enhances feature discrimination between points across boundaries by contrasting their representations with the assistance of scene contexts at multiple scales. By applying CBL on three different baseline methods, we experimentally show that CBL consistently improves different baselines and assists them to achieve compelling performance on boundaries, as well as the overall performance, eg in mIoU. The experimental results demonstrate the effectiveness of our method and the importance of boundaries for 3D point cloud segmentation. Code and model will be made publicly available at https://github.com/LiyaoTang/contrastBoundary.
翻译:然而,目前的三维点云分解方法通常在现场边界上表现不佳,致使总体分解性能下降。在本文中,我们侧重于现场边界的分解。因此,我们首先探讨评估现场边界分解性能的衡量标准。为了解决边界的不满意性能,我们然后提出一个新的点云分解对比性边界学习框架(CBL),具体地说,拟议的CBL通过在三个不同基线方法上应用CBL来对比其表达方式和场景背景的辅助作用,从而增加了边界之间的特征差别。我们实验性地表明,CBL不断改进不同的基线,协助它们在边界上取得令人信服的业绩,以及总体业绩,如在MIOU。实验结果将表明我们的方法的有效性和边界对3D点云分解的重要性。代码和模型将在https://github.com/LiyaoTang/contrastrastBoundary上公布。