An ANN based approach for wireless device fingerprinting

Kaushal Kumar, A. K. Dalai, Saroj Kumar Panigrahy, S. K. Jena
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引用次数: 5

Abstract

Device fingerprinting is a technique to characterize or identify a device by using collected information about the device. Wireless device fingerprinting plays an important role in finding counterfeit devices in a wireless network. Fingerprinting methods can be active by sending some information to the target device; or by observing the information sent by the target device which is known as passive fingerprinting. In this paper, a technique of fingerprinting wireless devices based on Artificial Neural Networks has been presented. The parameters used in our work are transmission time and frame inter-arrival time. Our technique classifies unique devices from GTID and Sigcomm2008 datasets using frame inter-arrival time and transmission time and then the results are presented. Using these technique accuracies of 92.3% and 95.8% have been achieved by considering inter-arrival time and transmission time respectively.
基于神经网络的无线设备指纹识别方法
设备指纹是一种利用收集到的设备信息来描述或识别设备的技术。无线设备指纹识别在无线网络中识别假冒设备起着重要的作用。指纹识别方法可以通过向目标设备发送一些信息来激活;或者通过观察目标设备发送的信息,这被称为被动指纹识别。本文提出了一种基于人工神经网络的无线设备指纹识别技术。在我们的工作中使用的参数是传输时间和帧间到达时间。我们的技术使用帧间到达时间和传输时间对GTID和Sigcomm2008数据集中的独特设备进行分类,然后给出结果。采用该技术,考虑到到达间隔时间和传输时间,精度分别达到92.3%和95.8%。
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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