基于向量模型的鲁棒蒙特卡罗定位

Bing-Gang Jhong, Mei-Yung Chen
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引用次数: 0

摘要

本文提出了一种增强的蒙特卡罗定位算法,该算法利用向量模型、重新初始化和反向收敛等多种增强机制,比传统的定位算法更有效、稳定和鲁棒。矢量模型重新定义了环境地图的模式,使得定位结果不受地图分辨率的限制。当算法缺少正确的位置并且不能跳出局部解时,重新初始化提供了第二次机会。反向收敛是本文研究的重点,它可以使算法适度地扩散粒子群。它很简单,但非常有用,特别是在噪声或传感器的传感距离限制的情况下。仿真结果也表明了该算法的优良性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Monte Carlo localization based on vector model
This paper proposed an enhanced Monte Carlo localization algorithm, which is more effective, stable and robust than traditional localization algorithm by using many strengthening mechanisms, such as vector model, re-initialization and reverse convergence. The vector model redefines the pattern of environment map, so that the localization result is not limited by the resolution of map. Re-initialization gives second chance when the algorithm is missing the right location and can't jump out the local solution. Reverse convergence, the most important in this paper, can let the algorithm spread particle swarm moderately. It is simple but very useful, especially for the case within noise or sensing distance limitations in the sensors. The simulation results also show the excellent performance of proposed algorithm.
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