Web31 okt. 2024 · IoT Devices Fingerprinting Using Deep Learning. Abstract: Radio …
Intrusion Detection for IoT Devices based on RF Fingerprinting …
Web1 apr. 2024 · The radio frequency (RF) fingerprint of IoT device is an inherent feature, which can hardly be imitated. In this paper, we propose a rogue device identification technique via RF fingerprinting using deep learning … WebTo perform the fingerprint attack, we train machine-learning algorithms based on selected features extracted from the encrypted IoT traffic. Extensive simulations involving the baseline approach show that we achieve not only a significant mean accuracy improvement of 18.5% and but also a speedup of 18.39 times for finding the best estimators ... inactive internet
IoT Device Fingerprint using Deep Learning - NASA/ADS
Web25 jan. 2024 · Ferdowsi and Saad proposed a deep learning method based on the long short-term memory (LSTM), which uses the fingerprints of the signal generated by an IoT mobile device. In addition, LSTM algorithm is used to allow an IoT mobile device updating the bit stream by considering the sequence of generated data. WebThis study applied deep learning on network traffic to automatically identify connected IoT devices that are not on the white-list (unknown devices) and trained multiclass classifiers to detect unauthorized IoT devices connected to the network. The growing use of IoT devices in organizations has increased the number of attack vectors available to attackers due to … Web7 jul. 2024 · The experimental results confirmed that the proposed framework based on deep learning algorithms for an intrusion detection system can effectively detect real-world attacks and is capable of enhancing the security of the IoT environment. 1. Introduction inactive interval