Phase difference based RFID navigation for medical applications

A. Wille, Magdalena Broll, S. Winter
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引用次数: 47

Abstract

RFID localization is a promising new field of work that is eagerly awaited for many different types of applications. For use in a medical context, special requirements and limitations must be taken into account, especially regarding accuracy, reliability and operating range. In this paper we present an experimental setup for a medical navigation system based on RFID. For this we applied a machine learning algorithm, namely support vector regression, to phase difference data gathered from multiple RFID receivers. The performance was tested on six datasets of different shape and placement within the volume spanned by the receivers. In addition, two grid based training sets of different size were considered for the regression. Our results show that it is possible to reach an accuracy of tag localization that is sufficient for some medical applications. Although we could not reach an overall accuracy of less than one millimeter in our experiments so far, the deviation was limited to two millimeters in most cases and the general results indicate that application of RFID localization even to highly critical applications, e. g., for brain surgery, will be possible soon.
基于相位差的RFID医疗导航
RFID定位是一个很有前途的新工作领域,许多不同类型的应用都热切地等待着它。在医疗环境中使用时,必须考虑特殊要求和限制,特别是在准确性、可靠性和操作范围方面。本文提出了一种基于RFID的医疗导航系统实验装置。为此,我们应用了一种机器学习算法,即支持向量回归,来处理从多个RFID接收器收集的相位差数据。在接收器所跨越的体积范围内,对六个不同形状和位置的数据集进行了性能测试。此外,考虑了两个不同大小的网格训练集进行回归。我们的结果表明,有可能达到标签定位的准确性,足以用于一些医疗应用。虽然到目前为止,我们在实验中无法达到小于1毫米的总体精度,但在大多数情况下,偏差被限制在2毫米以内,总体结果表明,RFID定位的应用,即使是高度关键的应用,例如,脑部手术,也将很快成为可能。
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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