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Distributed real-time cooperative localization and mapping using an uncertainty-aware expectation maximization approach

机译:使用不确定性感知的期望最大化方法进行分布式实时协作定位和映射

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We demonstrate distributed, online, and real-time cooperative localization and mapping between multiple robots operating throughout an unknown environment using indirect measurements. We present a novel Expectation Maximization (EM) based approach to efficiently identify inlier multi-robot loop closures by incorporating robot pose uncertainty, which significantly improves the trajectory accuracy over long-term navigation. An EM and hypothesis based method is used to determine a common reference frame. We detail a 2D laser scan correspondence method to form robust correspondences between laser scans shared amongst robots. The implementation is experimentally validated using teams of aerial vehicles, and analyzed to determine its accuracy, computational efficiency, scalability to many robots, and robustness to varying environments. We demonstrate through multiple experiments that our method can efficiently build maps of large indoor and outdoor environments in a distributed, online, and real-time setting.
机译:我们演示了使用间接测量在整个未知环境中运行的多个机器人之间的分布式,在线和实时协作本地化和映射。我们提出了一种新颖的基于期望最大化(EM)的方法,通过合并机器人姿态不确定性来有效地识别内部多机器人回路闭合,从而大大提高了长期导航的轨迹精度。基于EM和假设的方法用于确定公共参考系。我们详细介绍了一种二维激光扫描对应方法,以在机器人之间共享的激光扫描之间形成鲁棒的对应关系。该实现已通过使用飞行器团队进行了实验验证,并进行了分析以确定其准确性,计算效率,对许多机器人的可伸缩性以及对变化环境的鲁棒性。我们通过多次实验证明,我们的方法可以在分布式,在线和实时设置下有效地构建大型室内和室外环境的地图。

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