移动机器人全局定位的进化滤波算法

L. Moreno, M. L. Muoz, S. Garrido, F. Martín
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引用次数: 4

摘要

移动机器人全局定位的目的是在没有初始机器人姿态信息的情况下,确定机器人在已知环境中的姿态。本文提出了一种进化定位算法——进化定位滤波器(ELF)。该算法基于进化计算概念,沿状态空间随机搜索最佳机器人姿态估计值。姿态解的集合(总体)根据接收到的感知和运动信息表示最有可能的区域。种群的进化是通过概率感知和运动模型中观测和预测数据的比较得出的观测和运动误差。由此产生的全球定位模块已经在配备激光测距仪的移动机器人中进行了测试。实验证明了该方法的有效性、鲁棒性和计算效率。
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Evolutionary Filter for Mobile Robot Global Localization
Mobile robot global localization aims to determine the robot's pose in a known environment in absence of initial robot's pose information. This article presents an evolutive localization algorithm known as Evolutive Localization filter (ELF). Based on evolutionary computation concepts, the proposed algorithm search stochastically along the state space the best robot's pose estimate. The set of pose solutions (the population) represents the most likely areas according the perception and motion information received. The population evolves by using the observation and motion errors derived from the comparison between observed and predicted data obtained from the probabilistic perception and motion model. The resulting global localization module has been tested in a mobile robot equipped with a laser range finder. Experiments demonstrate the effectiveness, robustness and computational efficiency of the proposed approach.
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