Countering Eavesdroppers with Meta-learning-based Cooperative Ambient Backscatter Communications
Nam H. Chu, Nguyen Van Huynh, Diep N. Nguyen, Dinh Thai Hoang, Shimin, Gong, Tao Shu, Eryk Dutkiewicz, and Khoa T. Phan

TL;DR
This paper presents a lightweight, meta-learning-based framework using ambient backscattering to secure wireless communications against eavesdroppers by splitting messages and enabling effective decoding without perfect channel knowledge.
Contribution
The work introduces a novel meta-learning approach for decoding backscattered signals in ambient backscatter communications, enhancing security and adaptability without requiring perfect CSI.
Findings
Meta-learning-based detector achieves near-MLK performance
Framework effectively counters eavesdropping attacks
Requires minimal training data for adaptation
Abstract
This article introduces a novel lightweight framework using ambient backscattering communications to counter eavesdroppers. In particular, our framework divides an original message into two parts: (i) the active-transmit message transmitted by the transmitter using conventional RF signals and (ii) the backscatter message transmitted by an ambient backscatter tag that backscatters upon the active signals emitted by the transmitter. Notably, the backscatter tag does not generate its own signal, making it difficult for an eavesdropper to detect the backscattered signals unless they have prior knowledge of the system. Here, we assume that without decoding/knowing the backscatter message, the eavesdropper is unable to decode the original message. Even in scenarios where the eavesdropper can capture both messages, reconstructing the original message is a complex task without understanding the…
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Taxonomy
TopicsWireless Signal Modulation Classification · Full-Duplex Wireless Communications · Adversarial Robustness in Machine Learning
