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Efficient large scale SLAM including data association using the Combined Filter

机译:高效的大规模SLAM包括使用组合过滤器的数据关联

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In this paper we describe the Combined Filter, a judicious combination of Extended Kalman (EKF) and Extended Information filters (EIF) that can be used to execute highly efficient SLAM in large environments. With the CF, filter updates can be executed in as low as O(log n) as compared with other EKF and EIF based algorithms: O(n~2) for Map Joining SLAM, O(n) for Divide and Conquer (D&C) SLAM, and O(n~(1.5)) for the Sparse Local Submap Joining Filter (SLSJF). We also study an often overlooked problem in computationally efficient SLAM algorithms: data association. In situations in which only uncertain geometrical information is available for data association, the CF Filter is as efficient as D&C SLAM, and much more efficient than Map Joining SLAM or SLSJF. If alternative information is available for data association, such as texture in visual SLAM, the CF Filter outperforms all other algorithms. In large scale situations, both algorithms based on Extended Information filters, CF and SLSJF, avoid computing the full covariance matrix and thus require less memory, but still the CF Filter is the more computationally efficient. Both simulations and experiments with the Victoria Park dataset, the DLR dataset, and an experiment using visual stereo are used to illustrate the algorithms’ advantages.
机译:在本文中,我们描述了组合过滤器,扩展卡尔曼(EKF)和扩展信息过滤器(EIF)的明智组合,可用于在大型环境中执行高效的SLAM。使用CF,与其他EKF和基于EIF的算法相比,滤波器更新可以低至O(log n):O(n〜2)用于地图加入SLAM,O(n)用于分割和征管(D&C) SLAM和O(n〜(1.5))用于稀疏的本地子覆盖过滤器(SLSJF)。我们还研究了在计算上高效的SLAM算法中常见的问题:数据关联。在只有不确定的几何信息可用于数据关联的情况下,CF滤波器与D&C SLAM有效,并且比MAP加入SLAM或SLSJF更有效。如果可用于数据关联的替代信息,例如Visual Slam中的纹理,则CF滤波器优于所有其他算法。在大规模情况下,两种基于扩展信息过滤器,CF和SLSJF的算法,避免计算完整的协方差矩阵,因此需要更少的内存,但仍然仍然是CF滤波器越来越高效。使用Victoria Park DataSet,DLR数据集和使用视觉立体声的实验的模拟和实验都用于说明算法的优势。

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