Occupancy-SLAM: Simultaneously Optimizing Robot Poses and Continuous Occupancy Map

Liang Zhao, Yingyu Wang, Shoudong Huang
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引用次数: 3

Abstract

—In this paper, we propose an optimization based SLAM approach to simultaneously optimize the robot trajectory and the occupancy map using 2D laser scans (and odometry) information. The key novelty is that the robot poses and the occupancy map are optimized together, which is significantly different from existing occupancy mapping strategies where the robot poses need to be obtained first before the map can be esti- mated. In our formulation, the map is represented as a continuous occupancy map where each 2D point in the environment has a corresponding evidence value. The Occupancy-SLAM problem is formulated as an optimization problem where the variables include all the robot poses and the occupancy values at the selected discrete grid cell nodes. We propose a variation of Gauss-Newton method to solve this new formulated problem, obtaining the optimized occupancy map and robot trajectory together with their uncertainties. Our algorithm is an offline approach since it is based on batch optimization and the number of variables involved is large. Evaluations using simulations and publicly available practical 2D laser datasets demonstrate that the proposed approach can estimate the maps and robot trajectories more accurately than the state-of-the-art techniques, when a relatively accurate initial guess is provided to our algorithm. The video shows the convergence process of the proposed Occupancy- SLAM and comparison of results to Cartographer can be found at https://youtu.be/4oLyVEUC4iY.
占用slam:同时优化机器人姿态和连续占用地图
在本文中,我们提出了一种基于优化的SLAM方法,利用二维激光扫描(和里程计)信息同时优化机器人轨迹和占用地图。该方法的新颖之处在于将机器人姿态和占用地图一起优化,这与现有的占用地图策略有很大的不同,现有的占用地图策略需要先获得机器人姿态,然后才能估计地图。在我们的公式中,地图被表示为连续的占用图,其中环境中的每个2D点都有相应的证据值。占用- slam问题是一个优化问题,变量包括机器人的所有姿态和在选定的离散网格单元节点上的占用值。我们提出了一种改进的高斯-牛顿方法来求解这个新问题,得到了最优的占用图和机器人轨迹及其不确定性。我们的算法是一种离线方法,因为它是基于批量优化的,涉及的变量数量很大。使用模拟和公开可用的实际二维激光数据集进行的评估表明,当为我们的算法提供相对准确的初始猜测时,所提出的方法可以比最先进的技术更准确地估计地图和机器人轨迹。该视频显示了拟议的Occupancy- SLAM的收敛过程,并将结果与Cartographer进行了比较,可在https://youtu.be/4oLyVEUC4iY找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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