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Deep Learning Approaches for Open Set Wireless Transmitter Authorization

机译:面向开放式无线发射机授权的深度学习方法

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Wireless signals contain transmitter specific features, which can be used to verify the identity of transmitters and assist in implementing an authentication and authorization system. Most recently, there has been a wide interest in using deep learning for transmitter identification. However, the existing deep learning work has posed the problem as closed set classification, where a neural network classifies among a finite set of known transmitters. No matter how large this set is, it will not include all transmitters that exist. Malicious transmitters outside this closed set, once within communications range, can jeopardize the system security. In this paper, we propose a deep learning approach for transmitter authorization based on open set recognition. Our proposed approach identifies a set of authorized transmitters, while rejecting any other unseen transmitters by recognizing their signals as outliers. We propose three approaches for this problem and show their ability to reject signals from unauthorized transmitters on a dataset of WiFi captures. We consider the structure of training data needed, and we show that the accuracy improves by having signals from known unauthorized transmitters in the training set.
机译:无线信号包含特定于发射机的功能,可用于验证发射机的身份并协助实施身份验证和授权系统。最近,使用深度学习进行发射机识别引起了广泛的兴趣。但是,现有的深度学习工作已将问题提出为闭集分类,其中神经网络在有限的一组已知发射器之间进行分类。无论该集合有多大,它都将不包括所有存在的发射器。一旦处于通信范围之内,超出此封闭范围的恶意发送器可能会危害系统安全性。在本文中,我们提出了一种基于开放集识别的深度学习方法,用于发射机授权。我们提出的方法可识别一组授权的发射器,同时通过将其他未发现的发射器识别为异常信号来拒绝它们。我们针对此问题提出了三种方法,并展示了它们在WiFi捕获数据集上拒绝来自未经授权的发射机的信号的能力。我们考虑了所需训练数据的结构,并且表明通过在训练集中使用来自已知未经授权的发射机的信号可以提高准确性。

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