The LiDAR and inertial sensors based localization and mapping are of great significance for Unmanned Ground Vehicle related applications. In this work, we have developed an improved LiDAR-inertial localization and mapping system for unmanned ground vehicles, which is appropriate for versatile search and rescue applications. Compared with existing LiDAR-based localization and mapping systems such as LOAM, we have two major contributions: the first is the improvement of the robustness of particle swarm filter-based LiDAR SLAM, while the second is the loop closure methods developed for global optimization to improve the localization accuracy of the whole system. We demonstrate by experiments that the accuracy and robustness of the LiDAR SLAM system are both improved. Finally, we have done systematic experimental tests at the Hong Kong science park as well as other indoor or outdoor real complicated testing circumstances, which demonstrates the effectiveness and efficiency of our approach. It is demonstrated that our system has high accuracy, robustness, as well as efficiency. Our system is of great importance to the localization and mapping of the unmanned ground vehicle in an unknown environment.
翻译:以本地化和绘图为基础的LiDAR和惯性传感器对于无人驾驶地面飞行器的相关应用具有重大意义。在这项工作中,我们为无人驾驶地面飞行器开发了改进的LiDAR-惯性本地化和绘图系统,这适合于多功能搜索和救援应用。与LiDAR现有的LoAM等基于LiDAR的本地化和绘图系统相比,我们有两大贡献:一是改进以粒子群集过滤器为基础的LiDAR SLAM的稳健性,二是开发全球优化的循环封闭方法,以提高整个系统本地化的准确性。我们通过实验证明,LiDAR SLAM系统的准确性和稳健性都得到了改进。最后,我们在香港科学园区以及其他室内或室外实际复杂的测试环境进行了系统的实验,这显示了我们方法的效能和效率。证明我们的系统具有很高的准确性、稳健性以及效率。我们的系统对于未知环境中无人驾驶地面飞行器的本地化和绘图非常重要。