基于图的SLAM算法的城市环境制图协作与干预

Haorui Peng, C. Recchiuto, A. Sgorbissa
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引用次数: 0

摘要

本文描述了一种用于大型城市环境定位和绘图的协作方法的实现。这种方法预计会有多名操作员,配备可穿戴传感器,其输出被实时处理,以估计人类的里程数。然后应用基于图的CLAM方法,生成全局地图;为了改进算法的优化阶段,提出了确定性和概率干预方法。更详细地说,闭环程序已经根据人的感知和外部传感器的观察进行了改进。在热那亚历史中心进行了实验测试,证明了该方法克服了经典的多算子SLAM方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collaboration and Interventions on Urban Environment Mapping with Graph-based SLAM Algorithm
The article describes the implementation of a collaborative approach for localization and mapping of large urban environments. This approach foresees the presence of multiple human operators, endowed with wearable sensors, whose outputs are processed in real-time in order to estimate human odometry. A Graph-based CLAM approach, generating a global map, is then applied: in order to improve the optimization phase of the algorithm, deterministic and probabilistic intervention approaches are proposed. More in detail, the loop closure procedure has been improved according to human sensing and the observations of external sensors. Experimental tests have been carried out in the historical center of Genova, proving that the proposed method overcomes classical multi-operator SLAM approaches.
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