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A Supervised Learning Approach To Robot Localization Using A Short-range Rfid Sensor

机译:使用短距离Rfid传感器的机器人定位监督学习方法

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摘要

This work is concerned with the problem of robot localization using standard RFID tags as landmarks and an RFID reader as a landmark sensor. A main advantage of such an RFID-based localization system is the availability of landmark ID measurement, which trivially solves the data association problem. While the main drawback of an RFID system is its low spatial accuracy. The result in this paper is an improvement of the localization accuracy for a standard short-range RFID sensor. One of the main contributions is a proposal of a machine learning approach in which multiple classifiers are trained to distinguish RFID-signal features of each location. Another contribution is a design tool for tag arrangement by which the tag configuration needs not be manually designed by the user, but can be automatically recommended by the system. The effectiveness of the proposed technique is evaluated experimentally with a real mobile robot and an RFID system.
机译:这项工作与使用标准RFID标签作为地标和RFID阅读器作为地标传感器的机器人定位问题有关。这种基于RFID的定位系统的主要优点是可使用地标ID测量,从而轻松解决了数据关联问题。 RFID系统的主要缺点是空间精度低。本文的结果是改进了标准短距离RFID传感器的定位精度。其中一项主要贡献是提出了一种机器学习方法的建议,其中训练了多个分类器以区分每个位置的RFID信号特征。另一个贡献是用于标签布置的设计工具,通过该工具,标签配置不需要由用户手动设计,而是可以由系统自动推荐。通过实际的移动机器人和RFID系统对所提出技术的有效性进行了实验评估。

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