Unsupervised Semi-Parametric Plug-in Likelihood-Ratio Detection for Covert Communications in the Presence of Disco Reconfigurable Intelligent Surfaces
Luyao Sun, Huan Huang, Yongxing Song, Zhongxing Tian, Hongliang Zhang, Weidong Mei, Dongdong Zou, Yi Cai

TL;DR
This paper proposes an unsupervised semi-parametric likelihood-ratio detector for covert communications in environments with disco reconfigurable intelligent surfaces, improving detection without prior noise knowledge.
Contribution
It introduces a novel detector that learns from unlabeled data and does not require channel state information, enhancing covert detection capabilities.
Findings
Detector achieves performance close to supervised methods
Proposed method effectively handles intractable distributions
Simulation confirms robustness in covert detection scenarios
Abstract
Covert communications, also referred to as low probability of detection (LPD) communications, provide a higher level of privacy protection than cryptography and physical-layer security (PLS) by hiding transmissions in the ambient environment. In this work, we investigate covert communications in the presence of a disco reconfigurable intelligent surface (DRIS) deployed by the warden Willie, which reduces Willie's detection error probability (DEP), i.e., the sum of the false alarm rate (FAR) and the miss detection rate (MDR), and degrades the communication performance between Alice and Bob, without relying on either channel state information (CSI) or additional jamming power. However, the introduction of the DRIS makes it analytically intractable for Willie to construct the Neyman-Pearson (NP) detector, which is the optimal detector for monitoring potential covert transmissions between…
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