Effect of Kernel Function to Magnetic Map and Evaluation of Localization of Magnetic Navigation

Takumi Takebayashi, Renato Miyagusuku, K. Ozaki
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引用次数: 1

Abstract

Localization is one of the most fundamental requirements for the use of autonomous robots. In this work, we use magnetic-based localization; which, while not as accurate as laser rangefinder or camera-based systems, is not affected by a large number of people on its surrounding, making it ideal for applications where this is expected, such as service robotics in supermarkets, hotels, etc. Magnetic-based localization systems first create a magnetic map of the environment using magnetic samples acquired a priori. An approach for generating this map is to use collected data to training a Gaussian Process model. Gaussian Processes are non-parametric, data-drive models, where the most important design choice is the selection of an adequate kernel function. The purpose of this study is to improve the accuracy of the magnetic localization by testing several kernel functions and experimentally verifying its effects on robot localization.
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核函数对磁图的影响及磁导航定位评价
定位是使用自主机器人最基本的要求之一。在这项工作中,我们使用基于磁的定位;虽然不像激光测距仪或基于摄像头的系统那么精确,但它不会受到周围大量人群的影响,这使其成为理想的应用场合,如超市、酒店等的服务机器人。基于磁的定位系统首先使用先验获得的磁样本创建环境的磁图。生成此图的一种方法是使用收集的数据来训练高斯过程模型。高斯过程是非参数的数据驱动模型,其中最重要的设计选择是选择适当的核函数。本研究的目的是通过测试几个核函数,并通过实验验证其对机器人定位的影响,来提高磁定位的精度。
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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