2020
DOI: 10.3390/electronics9020294
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Harnessing the Adversarial Perturbation to Enhance Security in the Autoencoder-Based Communication System

Abstract: Given the vulnerability of deep neural network to adversarial attacks, the application of deep learning in the wireless physical layer arouses comprehensive security concerns. In this paper, we consider an autoencoder-based communication system with a full-duplex (FD) legitimate receiver and an external eavesdropper. It is assumed that the system is trained from end-to-end based on the concepts of autoencoder. The FD legitimate receiver transmits a well-designed adversary perturbation signal to jam the eavesdr… Show more

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