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PLACE: Physical Layer Cardinality Estimation for Large-Scale RFID Systems

机译:地点:大型RFID系统的物理层基数估计

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摘要

Estimating the number of RFID tags is a fundamental operation in RFID systems and has recently attracted wide attentions. Despite the subtleties in their designs, previous methods estimate the tag cardinality from the slot measurements, which distinguish idle and busy slots and based on that derive the cardinality following some probability models. In order to fundamentally improve the counting efficiency, in this paper we introduce PLACE, a physical layer based cardinality estimator. We show that it is possible to extract more information and infer integer states from the same slots in RFID communications. We propose a joint estimator that optimally combines multiple sub-estimators, each of which independently counts the number of tags with different inferred PHY states. Extensive experiments based on the GNURadio/USRP platform and the large-scale simulations demonstrate that PLACE achieves approximately 3∼4× performance improvement over state-of-the-art cardinality estimation approaches.
机译:估计RFID标签的数量是RFID系统的基本操作,并且最近引起了广泛的关注。尽管它们的设计有微妙之处,但先前的方法还是根据时隙测量值来估计标签的基数,从而区分空闲时隙和繁忙时隙,并根据这些概率模型推导基数。为了从根本上提高计数效率,在本文中,我们介绍了基于物理层的基数估计器PLACE。我们表明,有可能从RFID通信的相同插槽中提取更多信息并推断整数状态。我们提出了一种联合估计器,该估计器可以最佳地组合多个子估计器,每个子估计器独立地计算具有不同推断PHY状态的标签的数量。基于GNURadio / USRP平台的大量实验和大规模仿真表明,相比最先进的基数估计方法,PLACE实现了大约3-4倍的性能提升。

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