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Wifi Device Identification through Neural Network based on Channel State Information

摘要


The tremendous growth of wireless networks has brought a great deal of convenient to our daily lives. But the wireless devices are vulnerable to several attacks such as unauthorized client access. Therefore we want to be able to identify the legitimate and malicious Access Point (AP) for security purpose. The malicious user may attempt to apply attacks such as ARP attack, a method to change the ARP table to get legitimate user's data, Evil twin attack or Rouge AP, the attacker imitates the SSID as the legitimate Wifi AP to misleading the user to connect to the malicious APs. It will be a challenge to recognize the difference between legitimate AP and malicious AP when they have exactly same SSID and MAC address. This paper proposed a method to identity the Wifi APs through physical characteristics. The experiment is performed as a supervised learning LSTM and RNN based on Channel State Information (CSI). Comparing between LSTM and RNN, the results show that LSTM architecture is able to perform a better classification than RNN.

參考文獻


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