Reliable robot pose estimation is a key building block of many robot autonomy pipelines, with LiDAR localization being an active research domain. In this work, a versatile self-supervised LiDAR odometry estimation method is presented, in order to enable the efficient utilization of all available LiDAR data while maintaining real-time performance. The proposed approach selectively applies geometric losses during training, being cognizant of the amount of information that can be extracted from scan points. In addition, no labeled or ground-truth data is required, hence making the presented approach suitable for pose estimation in applications where accurate ground-truth is difficult to obtain. Furthermore, the presented network architecture is applicable to a wide range of environments and sensor modalities without requiring any network or loss function adjustments. The proposed approach is thoroughly tested for both indoor and outdoor real-world applications through a variety of experiments using legged, tracked and wheeled robots, demonstrating the suitability of learning-based LiDAR odometry for complex robotic applications.
翻译:可靠的机器人构成估计是许多机器人自主输油管的关键构件,而LiDAR本地化是一个积极的研究领域。在这项工作中,提出了一种多功能的自我监督LiDARodorization估计方法,以便在保持实时性能的同时,有效利用所有可用的LiDAR数据。拟议方法在培训期间有选择地应用几何损失,同时认识到可以从扫描点提取的信息数量。此外,不需要贴有标签或地面真实数据,从而使所提出的方法适合在难以获得准确地面真相的应用中作出估计。此外,所提出的网络结构适用于广泛的环境和传感器模式,而不需要任何网络或损失功能的调整。拟议方法通过使用腿、履带和轮式机器人进行的各种实验,对室内和室外现实世界应用进行彻底测试,以证明基于学习的LiDARodology方法适合复杂的机器人应用。