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An experimental comparative study of RSSI-based positioning algorithms for passive RFID localization in smart environments

机译:基于RSSI的智能环境中无源RFID定位算法的实验比较研究

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The rapid adoption of wireless technologies has increased the interest of many laboratories about the field of wireless sensor network or the radio-frequency identification (RFID) technology which has emerged as a winning combination for the implementation of an advanced assistance system within smart environments. To fulfill the important mission of a technological assistance, a technique first had to identify the ongoing activities of its user by tracking everyday life objects in real time using, for example, passive RFID tags. To increase the quality of information extracted from the objects localization by properly using the received signal strength indicator, this paper explores Kalman filter, particle filter and few others filtering algorithm that enhances the tracking performance. It also discusses three of the most interesting methods that can be applied for the localization of objects in smart environments without requiring the installation of references tags everywhere. Finally, to increase the value, we include experiments that were conducted within a real smart home infrastructure to review the positive and negative elements of each method.
机译:无线技术的迅速采用已引起许多实验室对无线传感器网络或射频识别(RFID)技术领域的兴趣,这些技术已成为在智能环境中实施高级辅助系统的成功组合。为了完成技术援助的重要任务,一种技术首先必须通过使用无源RFID标签实时跟踪日常生活中的对象来识别其用户正在进行的活动。为了通过正确使用接收信号强度指示器来提高从对象定位中提取的信息的质量,本文探索了卡尔曼滤波器,粒子滤波器以及其他一些可以提高跟踪性能的滤波算法。它还讨论了三种最有趣的方法,这些方法可用于智能环境中对象的本地化,而无需在所有位置安装引用标签。最后,为了增加价值,我们包括在真实的智能家居基础设施中进行的实验,以审查每种方法的积极和消极因素。

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