基于射频识别的指纹定位系统的量子算法

A. Shokry, Maged A. Youssef
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引用次数: 8

摘要

指纹识别是定位的主流技术之一。然而,它需要大量的存储开销和运行时间,这使得它无法扩展到支持世界范围的室内/室外本地化。量子计算有可能通过在量子计算机上解决一些经典的棘手问题来彻底改变计算。在本文中,我们提出了一种基于量子指纹的定位算法,用于实现大规模的位置跟踪系统,展望位置跟踪和空间系统的未来时代。具体来说,我们提出了一种量子算法,与传统的经典系统相比,它提供了空间和运行时间复杂度的指数增强。我们详细介绍了如何构建量子指纹,如何在量子粒子中对接收信号强度(RSS)测量值进行编码,最后;提出了一种计算在线RSS测量值与指纹测量值余弦相似度的量子算法。在IBM Quantum Experience机器上的三个真实测试台上部署我们的算法的结果证实了我们的量子系统能够获得与经典系统相同的精度,但在空间和运行时间上都有潜在的指数级节省。
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A Quantum Algorithm for RF-based Fingerprinting Localization Systems
Fingerprinting is one of the mainstream technologies for localization. However, it needs significant storage overhead and running time, preventing it from scaling to support world-wide indoor/outdoor localization.Quantum computing has the potential to revolutionize computation by making some classically intractable problems solvable on quantum computers. In this paper, we propose a quantum fingerprint-based localization algorithm for enabling large-scale location tracking systems, envisioning future era of location tracking and spatial systems. Specifically, we propose a quantum algorithm that provides an exponential enhancement of both the space and running time complexity compared to the traditional classical systems. We give the details of how to build the quantum fingerprint, how to encode the received signal strength (RSS) measurements in quantum particles, and finally; present a quantum algorithm for calculating the cosine similarity between the online RSS measurements and the fingerprint ones.Results from deploying our algorithm in three real testbeds on IBM Quantum Experience machines confirm the ability of our quantum system to get the same accuracy as the classical one but with the potential exponential saving in both space and running time.
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