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Classifying WiFi 'Physical Fingerprints' using Complex Deep Learning

机译:使用复杂深度学习对WiFi“物理指纹”进行分类

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Wireless communication is susceptible to security breaches by adversarial actors mimicking Media Access Controller (MAC) addresses of currently-connected devices. Classifying devices by their "physical fingerprint" can help to prevent this problem since the fingerprint is unique for each device and independent of the MAC address. Previous techniques have mapped the WiFi signal to real values and used classification methods that support solely real-valued inputs. In this paper, we put forth four new deep neural networks (NNs) for classifying WiFi physical fingerprints: a real-valued deep NN, a corresponding complex-valued deep NN, a real-valued deep CNN, and the corresponding complex-valued deep convolutional NN (CNN). Results show state-of-the-art performance against a dataset of nine WiFi devices.
机译:对抗行为者模仿当前连接的设备的媒体访问控制器(MAC)地址,从而使无线通信容易受到安全漏洞的破坏。通过设备的“物理指纹”对设备进行分类可以帮助防止此问题,因为每个设备的指纹都是唯一的,并且与MAC地址无关。先前的技术已经将WiFi信号映射到实际值,并使用了仅支持实际值输入的分类方法。在本文中,我们提出了四个新的用于对WiFi物理指纹进行分类的深度神经网络:一个实值深度NN,一个对应的复值深度NN,一个实值深度CNN和一个对应的复值深度神经网络。卷积神经网络(CNN)。结果显示了针对九个WiFi设备的数据集的最新性能。

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