首页 /研究 /LiDAR Point Cloud Generation for SLAM Algorithm Evaluation
PERCEPTION

LiDAR Point Cloud Generation for SLAM Algorithm Evaluation

Łukasz Sobczak, Katarzyna Filus, Adam Domański, Joanna Domańska

发表年份
2021
引用次数
35
访问权限
开放获取

摘要

With the emerging interest in the autonomous driving level at 4 and 5 comes a necessity to provide accurate and versatile frameworks to evaluate the algorithms used in autonomous vehicles. There is a clear gap in the field of autonomous driving simulators. It covers testing and parameter tuning of a key component of autonomous driving systems, SLAM, frameworks targeting off-road and safety-critical environments. It also includes taking into consideration the non-idealistic nature of the real-life sensors, associated phenomena and measurement errors. We created a LiDAR simulator that delivers accurate 3D point clouds in real time. The point clouds are generated based on the sensor placement and the LiDAR type that can be set using configurable parameters. We evaluate our solution based on comparison of the results using an actual device, Velodyne VLP-16, on real-life tracks and the corresponding simulations. We measure the error values obtained using Google Cartographer SLAM algorithm and the distance between the simulated and real point clouds to verify their accuracy. The results show that our simulation (which incorporates measurement errors and the rolling shutter effect) produces data that can successfully imitate the real-life point clouds. Due to dedicated mechanisms, it is compatible with the Robotic Operating System (ROS) and can be used interchangeably with data from actual sensors, which enables easy testing, SLAM algorithm parameter tuning and deployment.

关键词

Point cloudLidarComputer scienceSimultaneous localization and mappingMeasure (data warehouse)RangingPoint (geometry)Key (lock)Software deploymentReal-time computing

相关论文

查看 PERCEPTION 分类全部论文