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Link-Layer Device Type Classification on Encrypted Wireless Traffic with COTS Radios

机译:链接层设备类型对加密无线流量的Classification,COTS无线电

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In this work, we design and implement a framework, PrE-DeC, which enables an attacker to violate user privacy by using the encrypted link-layer radio traffic to detect device types in a targeted environment. We focus on 802.11 traffic using WPA2 as security protocol. Data is collected by passive eavesdropping using COTS radios. PrEDeC (a) extracts features using temporal properties, size of encrypted payload, type and direction of wireless traffic (b) filters features to improve overall performance (c) builds a classification model to detect different device types. While designing PrEDeC, we experimentally record the traffic of 22 IoT devices and manually classify that data into 10 classes to train three machine learning classifiers: Random Forest, Decision Tree and SVM. We analyze the performance of the classifiers on different block sizes (set of frames) and find that a block size of 30k frames with Random Forest classifier shows above 90% accuracy. Additionally, we observe that a reduced set of 49 features gives similar accuracy but better efficiency as compared to taking an entire set of extracted features. We investigate the significance of these features for classification. We further investigated the number of frames and the amount time required to eavesdrop them in different traffic scenarios.
机译:在这项工作中,我们设计并实现了Pre-Dec的框架,它使攻击者能够通过使用加密的链接层无线流量来检测目标环境中的设备类型来违反用户隐私。我们使用WPA2作为安全协议专注于802.11流量。使用COTS无线电通过被动窃听收集数据。 Predec(a)提取使用时间特性的特征,加密有效载荷的大小,无线流量的类型和方向(b)滤波器功能来提高整体性能(c)构建分类模型以检测不同的设备类型。在设计预测时,我们通过实验记录22个IOT设备的流量,并手动将数据分类为10个类,以培训三个机器学习分类器:随机林,决策树和SVM。我们分析了对不同块大小(帧集)上分类器的性能,并发现带有随机林分类器的30k帧的块大小显示高于90%的精度。此外,我们观察到减少的49个功能集提供了类似的准确性,但与采用整个提取的特征相比,效率更好。我们调查这些特征对分类的重要性。我们进一步调查了在不同的交通方案中窃听它们所需的帧数和所需的时间时间。

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