符号聚合近似算法(SAX)在物联网设备射频指纹识别中的应用

G. Baldini, Raimondo Giuliani, G. Steri, Ignacio Sanchez, C. Gentile
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引用次数: 8

摘要

射频(RF)指纹识别是通过射频发射识别和验证电子设备的问题。这些辐射包含了设备本身的固有特征。射频指纹可以用来增强无线网络的安全性,因为指纹提供了一种补充其他措施的身份验证形式。只要射频指纹能够提供较高的识别和验证精度,并且整个过程具有较高的计算效率,基于射频的身份验证在安全应用中具有实际应用价值。本文研究了一种基于时间序列的符号聚合近似算法(SAX)的射频指纹识别新方法。这是一种已知的具有时间效率的压缩方案,尽管它已应用于许多领域,但迄今为止从未在射频指纹问题中进行过研究。我们证明了基于SAX的方法提供了非常高的识别精度(超过99%),并且从计算的角度和对噪声的鲁棒性来看,与没有SAX的分类相比,它具有吸引力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The application of the Symbolic Aggregate Approximation algorithm (SAX) to radio frequency fingerprinting of IoT devices
Radio Frequency (RF) fingerprinting is the problem of identifying and authenticating an electronic device through its radio frequency emissions. These emissions contain intrinsic features of the device itself. RF fingerprinting can be used to enhance the security of wireless networks since the fingerprints provide a form of authentication complementing other measures. RF-based authentication turns out to be of practical use in security applications as long as the RF fingerprinting delivers high identification and verification accuracy, and the whole process is computationally efficient. In this paper, we investigate a novel approach to RF fingerprinting based on the application to time series of the Symbolic Aggregate Approximation algorithm (SAX). This is a compression scheme known to be time efficient and, although it has been applied to many domains, it has so far never been investigated in the problem of RF fingerprinting. We demonstrate that a SAX-based approach provides a very high identification accuracy (over 99%), and turns out to be attractive, as compared to classification without SAX, from both a computational standpoint and its robustness to noise.
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