A (Near) Zero-cost and Universal Method to Combat Multipaths for RFID Sensing

Ge Wang, Chen Qian, Kaiyan Cui, H. Ding, Haofan Cai, Wei Xi, Jinsong Han, Jizhong Zhao
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引用次数: 6

Abstract

There have been increasing interests in exploring the sensing capabilities of RFID to enable numerous IoT applications, including object localization, trajectory tracking, and human behavior sensing. However, most existing methods rely on the signal measurement either in a low multipath environment, which is unlikely to exist in many practical situations, or with special devices, which increase the operating cost. This paper investigates the possibility of measuring ‘multipath-free’ signal information in multipath-prevalent environments simply using a commodity RFID reader. The proposed solution, Clean Physical Information Extraction (CPIX), is universal, accurate, and compatible to standard protocols and devices. CPIX improves RFID sensing quality with near zero cost – it requires no extra device. We implement CPIX and evaluate its effectiveness on improving the performance on tag localization. The results show that CPIX reduces the localization error by 30% to 50% and achieves the MOST accurate localization by commodity readers compared to existing work.
一种(近)零成本和通用的RFID传感多路径对抗方法
人们对探索RFID的传感能力越来越感兴趣,以实现众多物联网应用,包括物体定位,轨迹跟踪和人类行为传感。然而,现有的大多数方法要么依赖于低多径环境下的信号测量,这在许多实际情况下是不太可能存在的,要么依赖于特殊的设备,这增加了运行成本。本文研究了在多路径流行环境中测量“无多路径”信号信息的可能性,只需使用商品RFID读取器。CPIX (Clean Physical Information Extraction)是一种通用、准确、兼容标准协议和设备的解决方案。CPIX提高了RFID传感质量,几乎零成本-它不需要额外的设备。我们实现了CPIX,并评估了它在提高标签定位性能方面的有效性。结果表明,与现有方法相比,CPIX将定位误差降低了30% ~ 50%,实现了商品阅读器最准确的定位。
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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