Solving computational and memory requirements of feature-based simultaneous localization and mapping algorithms

J. Guivant, E. Nebot
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引用次数: 85

Abstract

This paper presents new algorithms to implement simultaneous localization and mapping in environments with very large numbers of features. The algorithms present an efficient solution to the full update required by the compressed extended Kalman filter algorithm. It makes use of the relative landmark representation to develop very close to optimal decorrelation solutions. With this approach, the memory and computational requirements are reduced from /spl sim/O(N/sup 2/) to /spl sim/O(N/sup */N/sub a/), N and N/sub a/ proportional to the number of features in the map and features close to the vehicle, respectively. Experimental results are presented to verify the operation of the system when working in large outdoor environments.
解决基于特征的同步定位和映射算法的计算和内存需求
本文提出了在具有大量特征的环境中实现同时定位和映射的新算法。该算法有效地解决了压缩扩展卡尔曼滤波算法所要求的完全更新问题。它利用相对地标表示来开发非常接近最优解。通过这种方法,内存和计算需求从/spl sim/O(N/sup 2/)减少到/spl sim/O(N/sup */N/sub a/), N和N/sub a/分别与地图中的特征数量和靠近车辆的特征数量成正比。实验结果验证了该系统在大型室外环境下的工作性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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