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Decentralized Collaborative State Estimation for Aided Inertial Navigation

机译:辅助惯性导航的分散协作状态估计

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In this paper, we present a Quaternion-based Error-State Extended Kalman Filter (Q-ESEKF) based on IMU propagation with an extension for Collaborative State Estimation (CSE) and a communication complexity of $mathcal{O}(1)$ (in terms of required communication links). Our approach combines a versatile filter formulation with the concept of CSE, allowing independent state estimation on each of the agents and at the same time leveraging and statistically maintaining interdependencies between agents, after joint measurements and communication (i.e. relative position measurements) occur. We discuss the development of the overall framework and the probabilistic (re-)initialization of the agent’s states upon initial or recurring joint observations. Our approach is evaluated in a simulation framework on two prominent benchmark datasets in 3D.
机译:本文中,我们提出了一种基于四元数的基于IMU传播的错误状态扩展卡尔曼滤波器(Q-ESEKF),扩展了协作状态估计(CSE),通信复杂度为$ \ mathcal {O}(1)$ (根据所需的通信链接)。我们的方法将通用的过滤器公式与CSE的概念结合在一起,可以在进行联合测量和通信(即相对位置测量)之后,对每个代理进行独立的状态估计,同时利用并统计地保持代理之间的相互依赖性。我们讨论了整体框架的发展以及在进行初始或重复联合观察时代理商状态的概率(重新)初始化。我们的方法是在模拟框架中的两个著名3D基准数据集上进行评估的。

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