指纹(计算)
蓝牙
计算机科学
发射机
无线
分类器(UML)
无线电频率
指纹识别
无线电信号
无线网络
信号(编程语言)
带宽(计算)
人工智能
计算机网络
电信
频道(广播)
程序设计语言
作者
Abu Bucker Siddik,Dawson Drake,Thomas A. Wilkinson,Phillip L. De León,Steven Sandoval,Margaret Campos
标识
DOI:10.1109/hst53381.2021.9619843
摘要
Wireless network security may be improved by identifying networked devices via traits that are tied to hardware differences, typically related to unique variations introduced in the manufacturing process. One way these variations manifest is through unique transient events when a radio transmitter is activated or deactivated. Features extracted from these signal bursts have in some cases, shown to provide a unique "fingerprint" for a wireless device. However, only recently have researchers made such data available for research and comparison. Herein, we describe a publicly-available corpus of radio frequency signals that can be used for wireless device fingerprint research. The WIDEFT corpus contains signal bursts from 138 unique devices (100 bursts per device), including Bluetooth- and WiFi-enabled devices, from 79 unique models. Additionally, to demonstrate the utility of the WIDEFT corpus, we provide four baseline evaluations using a minimal subset of previously-proposed features and a simple ensemble classifier.
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