A fast and accurate panoptic segmentation system for LiDAR point clouds is crucial for autonomous driving vehicles to understand the surrounding objects and scenes. Existing approaches usually rely on proposals or clustering to segment foreground instances. As a result, they struggle to achieve real-time performance. In this paper, we propose a novel real-time end-to-end panoptic segmentation network for LiDAR point clouds, called CPSeg. In particular, CPSeg comprises a shared encoder, a dual-decoder, and a cluster-free instance segmentation head, which is able to dynamically pillarize foreground points according to the learned embedding. Then, it acquires instance labels by finding connected pillars with a pairwise embedding comparison. Thus, the conventional proposal-based or clustering-based instance segmentation is transformed into a binary segmentation problem on the pairwise embedding comparison matrix. To help the network regress instance embedding, a fast and deterministic depth completion algorithm is proposed to calculate the surface normal of each point cloud in real-time. The proposed method is benchmarked on two large-scale autonomous driving datasets: SemanticKITTI and nuScenes. Notably, extensive experimental results show that CPSeg achieves state-of-the-art results among real-time approaches on both datasets.
翻译:LIDAR 点云快速和准确的全光分解系统对于自主驱动器了解周围天体和场景至关重要。 现有方法通常依赖建议或组合到分层前景的场景。 因此, 它们很难实现实时性能。 在本文中, 我们提议为LIDAR 点云( 称为 CPSeg) 建立一个新型实时端到端的全光分解网络。 特别是, CPSeg 由共享的编码器、 双分解器和无集束实例分解仪头组成, 它能够根据学习的嵌入动态地表点的支柱化。 然后, 它通过找到连接的柱子来获取实例标签。 因此, 常规的基于建议或基于集束的实例分解正在转化成一个双向嵌入比较矩阵上的双向分解问题。 为了帮助网络回归实例嵌入, 提议一种快速和确定性深度完成算法, 以计算实时每个点云的表面正常度。 拟议方法以两个大规模自主驱动数据集为基准, 以两个大规模自动驱动数据基点结果为基准: Senag- stical- lag- sal- lag- laft- sal- sal- lag- sal- sal