The current LiDAR SLAM (Simultaneous Localization and Mapping) system suffers greatly from low accuracy and limited robustness when faced with complicated circumstances. From our experiments, we find that current LiDAR SLAM systems have limited performance when the noise level in the obtained point clouds is large. Therefore, in this work, we propose a general framework to tackle the problem of denoising and loop closure for LiDAR SLAM in complex environments with many noises and outliers caused by reflective materials. Current approaches for point clouds denoising are mainly designed for small-scale point clouds and can not be extended to large-scale point clouds scenes. In this work, we firstly proposed a lightweight network for large-scale point clouds denoising. Subsequently, we have also designed an efficient loop closure network for place recognition in global optimization to improve the localization accuracy of the whole system. Finally, we have demonstrated by extensive experiments and benchmark studies that our method can have a significant boost on the localization accuracy of the LiDAR SLAM system when faced with noisy point clouds, with a marginal increase in computational cost.
翻译:目前的LiDAR SLAM(同时定位和绘图)系统在面临复杂情况时,因精确度低和稳健度有限而深受其害。我们通过实验发现,当获得的点云的噪音水平很大时,目前的LiDAR SLAM系统性能有限,因此,在这项工作中,我们提出了一个总体框架,以解决LiDAR SLAM在复杂环境中的分解和环闭问题,因为反射材料造成许多噪音和外缘。目前对点云的分解方法主要是为小型点云设计的,不能扩大到大点云场。在这项工作中,我们首先提出了大规模点云分解的轻量网络。随后,我们还设计了一个高效的环闭网络,以便在全球优化中进行定位,以提高整个系统的本地化准确性。最后,我们通过广泛的实验和基准研究证明,我们的方法可以大大提升在面临热点云时,LDAR SLAM系统本地化的准确度,并导致计算成本的边际增加。