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首页> 外文期刊>Robotics and Autonomous Systems >Amortized constant time state estimation in Pose SLAM and hierarchical SLAM using a mixed Kalman-information filter
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Amortized constant time state estimation in Pose SLAM and hierarchical SLAM using a mixed Kalman-information filter

机译:使用混合Kalman信息滤波器的Pose SLAM和分层SLAM中的摊销恒定时间状态估计

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摘要

The computational bottleneck in all information-based algorithms for simultaneous localization and mapping (SLAM) is the recovery of the state mean and covariance. The mean is needed to evaluate model Jacobians and the covariance is needed to generate data association hypotheses. In general, recovering the state mean and covariance requires the inversion of a matrix with the size of the state, which is computationally too expensive in time and memory for large problems. Exactly sparse state representations, such as that of Pose SLAM, alleviate the cost of state recovery either in time or in memory, but not in both. In this paper, we present an approach to state estimation that is linear both in execution time and in memory footprint at loop closure, and constant otherwise. The method relies on a state representation that combines the Kalman and the information-based approaches. The strategy is valid for any SLAM system that maintains constraints between marginal states at different time slices. This includes both Pose SLAM, the variant of SLAM where only the robot trajectory is estimated, and hierarchical techniques in which submaps are registered with a network of relative geometric constraints.
机译:所有基于信息的同时进行定位和映射(SLAM)的算法的计算瓶颈是状态均值和协方差的恢复。需要平均值来评估模型雅可比行列式,并且需要协方差来生成数据关联假设。通常,要恢复状态均值和协方差,需要对具有状态大小的矩阵求反,这在时间和内存上对于大型问题而言在计算上过于昂贵。精确稀疏的状态表示(例如Pose SLAM的状态表示)既可以在时间上也可以在内存中减轻状态恢复的成本,但不能同时降低这两种状态。在本文中,我们提出了一种状态估计的方法,该方法在执行时间和循环闭合时的内存占用量上都是线性的,否则是恒定的。该方法依赖于结合了Kalman方法和基于信息的方法的状态表示。该策略对于在不同时间段保持边际状态之间约束的任何SLAM系统均有效。这既包括Pose SLAM(SLAM的变体,SLAM的变体仅估计机器人的轨迹),又包括分层技术,在这些技术中,子图通过相对几何约束的网络进行配准。

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