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Identifying Unlabeled WiFi Devices with Zero-Shot Learning

机译:零热学习识别未标记的WiFi设备

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In wireless networks. MAC-address spoofing is a common attack that allows an adversary to gain access to the system. To circumvent this threat, previous work has focused on classifying wireless signals using a "physical fingerprint", i.e., changes to the signal caused by physical differences in the individual wireless chips. Instead of relying on MAC addresses for admission control, fingerprinting allows devices to be classified and then granted access. In many network settings, the activity of legitimate devices-those devices that should be granted access-may be dynamic over time. Consequently, when faced with a device that comes online, a robust fingerprinting scheme must quickly identify the device as legitimate using the pre-existing classification, and meanwhile identify and group those unauthorized devices based on their signals. This paper presents a two-stage Zero-Shot Learning (ZSL) approach to classify a received signal originating from either a legitimate or unauthorized device. In particular, during the training stage, a classifier is trained for classifying legitimate devices. The classifier learns discriminative features and the outlier detector uses these features to classify whether a new signature is an outlier. Then, during the testing stage, an online clustering method is applied for grouping those identified unauthorized devices. Our approach allows 42% of unauthorized devices to be identified as unauthorized and correctly clustered.
机译:在无线网络中。 MAC地址欺骗是一种常见的攻击,它使攻击者可以访问系统。为了避免这种威胁,先前的工作集中在使用“物理指纹”对无线信号进行分类,即由各个无线芯片中的物理差异引起的信号变化。指纹识别不依赖于MAC地址进行准入控制,而是可以对设备进行分类,然后授予访问权限。在许多网络设置中,合法设备(应被授予访问权限的那些设备)的活动可能会随着时间而动态变化。因此,当面对在线设备时,健壮的指纹识别方案必须使用预先存在的分类快速将设备识别为合法设备,同时根据其信号对未授权设备进行识别和分组。本文提出了一种两阶段的零散学习(ZSL)方法,对来自合法或未授权设备的接收信号进行分类。特别地,在训练阶段,对分类器进行训练以对合法设备进行分类。分类器学习判别特征,离群值检测器使用这些特征对新签名是否为离群值进行分类。然后,在测试阶段,将在线聚类方法应用于对那些识别出的未授权设备进行分组。我们的方法允许将42%的未授权设备识别为未授权并正确集群。

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