In autonomous vehicles or robots, point clouds from LiDAR can provide accurate depth information of objects compared with 2D images, but they also suffer a large volume of data, which is inconvenient for data storage or transmission. In this paper, we propose a Range image-based Point Cloud Compression method, R-PCC, which can reconstruct the point cloud with uniform or non-uniform accuracy loss. We segment the original large-scale point cloud into small and compact regions for spatial redundancy and salient region classification. Compared with other voxel-based or image-based compression methods, our method can keep and align all points from the original point cloud in the reconstructed point cloud. It can also control the maximum reconstruction error for each point through a quantization module. In the experiments, we prove that our easier FPS-based segmentation method can achieve better performance than instance-based segmentation methods such as DBSCAN. To verify the advantages of our proposed method, we evaluate the reconstruction quality and fidelity for 3D object detection and SLAM, as the downstream tasks. The experimental results show that our elegant framework can achieve 30$\times$ compression ratio without affecting downstream tasks, and our non-uniform compression framework shows a great improvement on the downstream tasks compared with the state-of-the-art large-scale point cloud compression methods. Our real-time method is efficient and effective enough to act as a baseline for range image-based point cloud compression. The code is available on https://github.com/StevenWang30/R-PCC.git.
翻译:在自主飞行器或机器人中,来自LIDAR的点云可以提供与 2D 图像相比的物体准确深度信息,但是它们也会遭受大量的数据,这不利于数据储存或传输。在本文中,我们提出一个基于区域图像的点云压缩法,即R-PCC,它可以以统一或不统一的准确性损失来重建点云。我们将原大点云分解到小型和紧凑区域,以便进行空间冗余和突出的区域分类。与其他基于 voxel 的或基于图像的压缩方法相比,我们的方法可以保存和调整从重建点云中原点云的所有点的所有点。我们的方法也可以通过一个量化模块来控制每个点的最大重建错误。在实验中,我们基于FPS 的分解法比基于实例的分解方法(如DBSCAN)更容易实现更好的性能。为了验证我们拟议方法的优势,我们评估基于3D 对象检测和SLM 的重建质量和准确性,作为下游任务。实验结果显示,我们的精准框架可以达到30 点/timeal-rmatimeal-rmalal-rmatimeal labal-laimal-lagial lax lax lax labal lax lax atoal lax lax