基于并行地图的动态环境下多机器人SLAM

S. Badalkhani, R. Havangi, M. Farshad
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引用次数: 2

摘要

关于多机器人同时定位和映射(MRSLAM)有大量的文献。在大多数研究中,假设环境是静态的,而环境的动态部分降低了SLAM算法的估计质量,导致系统固有脆弱。为了提高SLAM在动态环境下的性能和鲁棒性,本文提出了一种新的协同方法——并行映射SLAM (p-map)。该方法的目标是通过检测动态部分并防止它们被包含在SLAM估计中来处理环境的动态性。在这种方法中,每个机器人在自己的附近构建一个有限的地图,而全球地图是通过混合集中式MRSLAM构建的。局部地图的大小有限,限制了处理大规模动态环境所需的计算复杂性和资源。使用概率指数,该方法根据静止和移动的地标与环境中其他部分的相对位置来区分它们。然后使用静止的地标来完善一致的地图。对所提出的方法进行了不同级别的动态评估,并对每个级别的性能进行了精度、鲁棒性和实现所需硬件资源的测量。该方法还使用公开可用的真实世界数据集进行评估。实验验证和仿真结果表明,该方法能够在动态环境下进行一致性SLAM,表明了该方法在MRSLAM应用中的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Robot SLAM in Dynamic Environments with Parallel Maps
There is an extensive literature regarding multi-robot simultaneous localization and mapping (MRSLAM). In most part of the research, the environment is assumed to be static, while the dynamic parts of the environment degrade the estimation quality of SLAM algorithms and lead to inherently fragile systems. To enhance the performance and robustness of the SLAM in dynamic environments (SLAMIDE), a novel cooperative approach named parallel-map (p-map) SLAM is introduced in this paper. The objective of the proposed method is to deal with the dynamics of the environment, by detecting dynamic parts and preventing the inclusion of them in SLAM estimations. In this approach, each robot builds a limited map in its own vicinity, while the global map is built through a hybrid centralized MRSLAM. The restricted size of the local maps, bounds computational complexity and resources needed to handle a large scale dynamic environment. Using a probabilistic index, the proposed method differentiates between stationary and moving landmarks, based on their relative positions with other parts of the environment. Stationary landmarks are then used to refine a consistent map. The proposed method is evaluated with different levels of dynamism and for each level, the performance is measured in terms of accuracy, robustness, and hardware resources needed to be implemented. The method is also evaluated with a publicly available real-world data-set. Experimental validation along with simulations indicate that the proposed method is able to perform consistent SLAM in a dynamic environment, suggesting its feasibility for MRSLAM applications.
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