首页 /研究 /Make it Dense: Self-Supervised Geometric Scan Completion of Sparse 3D LiDAR Scans in Large Outdoor Environments
PERCEPTION

Make it Dense: Self-Supervised Geometric Scan Completion of Sparse 3D LiDAR Scans in Large Outdoor Environments

Ignacio Vizzo, Benedikt Mersch, Rodrigo Marcuzzi, Louis Wiesmann, Jens Behley, Cyrill Stachniss

发表年份
2022
引用次数
20

摘要

Mapping systems that turn sensor data into a model of the environment are standard components in mobile robotics. Outdoor robots are often equipped with 3D LiDAR sensors to obtain accurate range measurements at a high frame rate. The price for a robotic LiDAR sensor scales roughly linearly with the number of beams and thus the vertical resolution of the scanner. In general, the cheaper the sensors, the sparser the point cloud. In this letter, we address the problem of building dense models from sparse range data. Instead of requiring the vehicle to move slowly through the environment or to traverse the scene multiple times to cover the space densely, we investigate geometric scan completion through a learning-based approach. We revisit the traditional volumetric fusion pipeline based on truncated signed distance fields (TSDF) and propose a neural network to aid the 3D reconstruction on a frame-to-frame basis by completing each scan towards a dense TSDF volume. We propose a geometric scan completion network that is trained in a self-supervised fashion without labels. Our experiments illustrate that such frame-wise completion leads to maps that are on-par or even better compared to maps generated using a higher resolution LiDAR sensor. We additionally show that our system can be used to improve the performance of SLAM systems.

关键词

LidarArtificial intelligencePoint cloudComputer scienceComputer visionFrame (networking)Frame ratePipeline (software)Range (aeronautics)Robotics

相关论文

查看 PERCEPTION 分类全部论文