π-LSAM:激光雷达平滑与平面映射

Lipu Zhou, Shengze Wang, M. Kaess
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引用次数: 25

摘要

本文介绍了一种用于室内环境的实时密集平面激光雷达SLAM系统π-LSAM。广泛使用的激光雷达测程和测绘(LOAM)框架[1]不包括束调整(BA),产生低保真度跟踪姿态。本文试图克服这些缺点,为室内环境。具体来说,我们以平面为地标,引入平面调整(PA)作为后端,共同优化平面和关键帧姿态。我们提出π因子来显著降低PA的计算复杂度。此外,我们还介绍了一种基于RANSAC框架的基于平面的高效环路检测算法。在前端,我们的算法实时进行全局配准。为了实现这一性能,我们每次扫描都保持局部到全局点到平面的对应关系,因此我们只需要一个小的局部kd树来建立LiDAR扫描与全局平面之间的数据关联,而不是像以前的工作那样使用一个大的全局kd树。通过这种局部到全球的数据关联,我们的算法可以在激光雷达扫描中直接识别飞机,并产生准确且全球一致的姿态。实验结果表明,我们的算法明显优于最先进的LOAM变体LeGO-LOAM[2],并且我们的算法实现了实时性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
π-LSAM: LiDAR Smoothing and Mapping With Planes
This paper introduces a real-time dense planar LiDAR SLAM system, named π-LSAM, for the indoor environment. The widely used LiDAR odometry and mapping (LOAM) framework [1] does not include bundle adjustment (BA) and generates a low fidelity tracking pose. This paper seeks to overcome these drawbacks for the indoor environment. Specifically, we use the plane as the landmark, and introduce plane adjustment (PA) as our back-end to jointly optimize planes and keyframe poses. We present the π-factor to significantly reduce the computational complexity of PA. In addition, we introduce an efficient loop detection algorithm based on the RANSAC framework using planes. In the front-end, our algorithm performs global registration in real time. To achieve this performance, we maintain the local-to-global point-to-plane correspondences scan by scan, so that we only need a small local KD-tree to establish the data association between a LiDAR scan and the global planes, rather than a large global KD-tree used in previous works. With this local-to-global data association, our algorithm directly identifies planes in a LiDAR scan, and yields an accurate and globally consistent pose. Experimental results show that our algorithm significantly outperforms the state-of-the-art LOAM variant, LeGO-LOAM [2], and our algorithm achieves real time.
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