4.6 Article

Adversarial Machine Learning for NextG Covert Communications Using Multiple Antennas

Journal

ENTROPY
Volume 24, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/e24081047

Keywords

deep learning; covert communications; signal classification; adversarial attack

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This paper investigates the privacy of wireless communications against eavesdroppers who use a deep learning classifier to detect transmissions of interest. By utilizing a cooperative jammer that sends adversarial perturbations, the eavesdropper can be deceived into misclassifying the received signals as noise. The results show that the adversarial perturbation is more effective when multiple antennas are used.
This paper studies the privacy of wireless communications from an eavesdropper that employs a deep learning (DL) classifier to detect transmissions of interest. There exists one transmitter that transmits to its receiver in the presence of an eavesdropper. In the meantime, a cooperative jammer (CJ) with multiple antennas transmits carefully crafted adversarial perturbations over the air to fool the eavesdropper into classifying the received superposition of signals as noise. While generating the adversarial perturbation at the CJ, multiple antennas are utilized to improve the attack performance in terms of fooling the eavesdropper. Two main points are considered while exploiting the multiple antennas at the adversary, namely the power allocation among antennas and the utilization of channel diversity. To limit the impact on the bit error rate (BER) at the receiver, the CJ puts an upper bound on the strength of the perturbation signal. Performance results show that this adversarial perturbation causes the eavesdropper to misclassify the received signals as noise with a high probability while increasing the BER at the legitimate receiver only slightly. Furthermore, the adversarial perturbation is shown to become more effective when multiple antennas are utilized.

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