Fast and efficient semantic segmentation of large-scale LiDAR point clouds is a fundamental problem in autonomous driving. To achieve this goal, the existing point-based methods mainly choose to adopt Random Sampling strategy to process large-scale point clouds. However, our quantative and qualitative studies have found that Random Sampling may be less suitable for the autonomous driving scenario, since the LiDAR points follow an uneven or even long-tailed distribution across the space, which prevents the model from capturing sufficient information from points in different distance ranges and reduces the model's learning capability. To alleviate this problem, we propose a new Polar Cylinder Balanced Random Sampling method that enables the downsampled point clouds to maintain a more balanced distribution and improve the segmentation performance under different spatial distributions. In addition, a sampling consistency loss is introduced to further improve the segmentation performance and reduce the model's variance under different sampling methods. Extensive experiments confirm that our approach produces excellent performance on both SemanticKITTI and SemanticPOSS benchmarks, achieving a 2.8% and 4.0% improvement, respectively.
翻译:大型LiDAR点云的快速和高效语义分割是自主驱动的根本问题。 为实现这一目标,现有点基方法主要选择采用随机抽样战略处理大型点云。然而,我们的定量和定性研究发现,随机抽样可能不太适合自主驱动情景,因为LiDAR点分布不均甚至长尾不均,使模型无法从不同距离的点获取足够的信息,并降低了模型的学习能力。为缓解这一问题,我们建议采用新的极地圆平衡平衡随机取样方法,使下游点云能够保持更均衡的分布,并在不同的空间分布下提高分解性能。此外,还引入了抽样一致性损失,以进一步改进分解性性,减少不同取样方法下的模型差异。广泛的实验证实,我们的方法在SmanticKITTI和SmanticPOSS基准上都取得了出色的业绩,分别实现了2.8%和4.0%的改进。