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Range-Based Collaborative MSCKF Localization

机译:基于范围的协作MSCKF本地化

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摘要

In this paper, a framework for collaborative localization of heterogenous systems is presented. Making advantage of the original MSCKF framework, we design a collaborative MSCKF filter that operates in two levels and allows a decentralized 3D collaborative localization without use of external computation systems. To achieve that, based on MSCKF localization, we first propose a range based collaboration that we optimize using the extracted environment constraints, an operation allowed by the use of a truncated unscented kalman filtering updates. The collaborative filtering is managed to not impact the original MSCKF odometry properties. The framework is applied to collaborative localization of aerial and ground robots; experimental results show the effectiveness of the proposed method.
机译:在本文中,提出了异构系统协同本地化的框架。利用原始的MSCKF框架,我们设计了一个协作式MSCKF过滤器,该过滤器可在两个级别上运行,并且无需使用外部计算系统即可进行分散式3D协作本地化。为此,基于MSCKF本地化,我们首先提出了基于范围的协作,我们使用提取的环境约束进行了优化,该操作通过使用截断的无味卡尔曼滤波更新进行允许。协作过滤被管理为不影响原始MSCKF里程表属性。该框架适用于空中和地面机器人的协作定位;实验结果表明了该方法的有效性。

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