Passive Classification of Wi-Fi Enabled Devices

A. Redondi, D. Sanvito, M. Cesana
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引用次数: 10

Abstract

We propose a method for classifying Wi-Fi enabled mobile handheld devices (smartphones) and non-handheld devices (laptops) in a completely passive way, that is resorting neither to traffic probes on network edge devices nor to deep packet inspection techniques to read application layer information. Instead, classification is performed starting from probe requests Wi-Fi frames, which can be sniffed with inexpensive commercial hardware. We extract distinctive features from probe request frames (how many probe requests are transmitted by each device, how frequently, etc.) and take a machine learning approach, training four different classifiers to recognize the two types of devices. We compare the performance of the different classifiers and identify a solution based on a Random Decision Forest that correctly classify devices 95% of the times. The classification method is then used as a pre-processing stage to analyze network traffic traces from the wireless network of a university building, with interesting considerations on the way different types of devices uses the network (amount of data exchanged, duration of connections, etc.). The proposed methodology finds application in many scenarios related to Wi-Fi network management/optimization and Wi-Fi based services.
使能Wi-Fi设备的被动分类
我们提出了一种以完全被动的方式对支持Wi-Fi的移动手持设备(智能手机)和非手持设备(笔记本电脑)进行分类的方法,即既不借助于网络边缘设备上的流量探测,也不借助于深度数据包检测技术来读取应用层信息。相反,分类是从探测请求Wi-Fi帧开始执行的,这可以用廉价的商业硬件进行嗅探。我们从探测请求帧中提取不同的特征(每个设备传输多少个探测请求,频率等),并采用机器学习方法,训练四种不同的分类器来识别两种类型的设备。我们比较了不同分类器的性能,并基于随机决策森林确定了一个解决方案,该解决方案在95%的时间内正确地对设备进行分类。然后将分类方法用作预处理阶段,分析来自大学大楼无线网络的网络流量轨迹,并对不同类型的设备使用网络的方式(交换的数据量、连接的持续时间等)进行有趣的考虑。所提出的方法在与Wi-Fi网络管理/优化和基于Wi-Fi的服务相关的许多场景中都有应用。
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