Temporal Smoothing Particle Filter for Vision based Autonomous Mobile Robot Localization

ICINCO-RA Pub Date : 2016-11-22 DOI:10.5220/0001497400930100
Walter Nisticò, Matthias Hebbel
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引用次数: 6

Abstract

Particle filters based on the Sampling Importance Resampling (SIR) algorithm have been extensively and successfully used in the field of mobile robot localization, especially in the recent extensions (Mixture Monte Carlo) which sample a percentage of particles directly from the sensor model. However, in the context of vision based localization for mobile robots, the Markov assumption on which these methods rely is frequently violated, due to “ghost percepts” and undetected collisions, and this can be troublesome especially when working with small particle sets, due to limited computational resources and real-time constraints. In this paper we present an extension of Monte Carlo localization which relaxes the Markov assumption by tracking and smoothing the changes of the particles’ importance weights over time, and limits the speed at which the samples are redistributed after a single resampling step. We present the results of experiments conducted on vision based localization in an indoor environment for a legged-robot, in comparison with state of the art
基于时间平滑粒子滤波的自主移动机器人视觉定位
基于采样重要性重采样(SIR)算法的粒子滤波在移动机器人定位领域得到了广泛而成功的应用,特别是在最近的扩展(混合蒙特卡罗)中,它直接从传感器模型中采样一定百分比的粒子。然而,在移动机器人基于视觉定位的背景下,由于“幽灵感知”和未检测到的碰撞,这些方法所依赖的马尔可夫假设经常被违反,这可能会很麻烦,特别是在处理小粒子集时,由于有限的计算资源和实时约束。在本文中,我们提出了蒙特卡罗定位的扩展,它通过跟踪和平滑粒子的重要权值随时间的变化来放宽马尔可夫假设,并限制了单个重采样步骤后样本重新分布的速度。我们介绍了在室内环境中对有腿机器人进行基于视觉定位的实验结果,并与目前的技术状况进行了比较
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