基于半直接方法的多机器人协同单目SLAM

Yun Zhao, Xianghua Ma, Yinzhong Ye
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引用次数: 2

摘要

针对当前复杂环境下多机器人协同视觉同步定位与映射(SLAM)算法精度低、鲁棒性差的问题,提出了一种基于半直接法的多机器人协同单目SLAM算法。该算法采用集中式协同框架。在这个框架中,每个机器人都运行基于直接方法的视觉里程计,既可以保持机器人自身的自主性,又可以在局部地图上实现快速、稳健的姿态跟踪。中央服务器使用通信模块接收所有机器人的边缘关键帧和关键点,并利用特征方法进一步细化这些关键帧的姿态,构建可重用的局部稀疏特征图。当检测到这些地图重叠时,它们被融合成一个全球地图。在TUM和EuRoC数据集上进行了实验,结果表明本文算法具有较高的共定位精度和鲁棒性。
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A Multi-Robot Collaborative Monocular SLAM Based on Semi-Direct Method
Aiming at the problems of low accuracy and poor robustness of current multi-robot cooperative visual simultaneous localization and mapping (SLAM) algorithms in complex environments, a multi-robot cooperative monocular SLAM algorithm based on the semi-direct method is proposed. The algorithm adopts a centralized collaborative framework. In this framework, each robot runs a direct-method based visual odometry, which can both preserves their own autonomy and enables fast and robust pose tracking on local maps. The central server uses the communication module to receive the marginalized keyframes and keypoints of all robots, and utilizes the feature method to further refine the poses of these keyframes and build reusable local sparse feature maps. These maps are fused to build a global map when they are detected to overlap. Experiments are carried out on TUM and EuRoC datasets and the results show that the algorithm in this paper has higher accuracy and robustness in co-localization.
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