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Sparse Pointcloud Map Fusion of Multi-Robot System

机译:多机器人系统的稀疏Pointcloud地图融合

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摘要

Map building is a crucial function of multi-robot system, and many available autonomous navigations in multi-robot systems assume high precision of the environmental map. Thus, poor performance in map building can heavily affect the navigation results in a large-scale environment. The core issue that needs to be addressed of multi-robot mapping is how to integrate the data of the different robots into a single global map. In this paper, a matching search strategy based on the co-viewing relationship between key frames is proposed to reduce matching time. The key frames to be matched are selected from the maps according to a certain condition instead of being matched individually. Thus, a considerable amount of match time can be saved. After a set of matched map points are obtained, the motion estimation between matched points is solved by nonlinear optimization and an error compensation technique is employed to obtain more accurate camera posture. Finally, the redundant map points after fusion are removed, and both the connection between the key frames and the map points in the two maps are established. The algorithm is tested in an indoor environment and the experiment results show the validness of the proposed method.
机译:地图构建是多机器人系统的关键功能,并且多机器人系统中的许多可用自主导航都假定环境地图的精度很高。因此,在大型环境中,地图构建中的不良性能会严重影响导航结果。多机器人映射需要解决的核心问题是如何将不同机器人的数据集成到单个全局映射中。本文提出了一种基于关键帧间共同观看关系的匹配搜索策略,以减少匹配时间。根据特定条件从映射中选择要匹配的关键帧,而不是单独进行匹配。因此,可以节省大量的比赛时间。在获得一组匹配的地图点之后,通过非线性优化来解决匹配点之间的运动估计,并采用误差补偿技术来获得更准确的相机姿态。最后,去除融合后的冗余地图点,并建立两个地图中关键帧和地图点之间的连接。在室内环境下对该算法进行了测试,实验结果表明了该方法的有效性。

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