Two-Way Training for Discriminatory Channel Estimation in Wireless MIMO Systems
Chao-Wei Huang, Tsung-Hui Chang, Xiangyun Zhou, and Y.-W. Peter Hong

TL;DR
This paper introduces a two-way training method for MIMO systems that enhances discriminatory channel estimation, effectively degrading the unauthorized receiver's performance while maintaining legitimate receiver accuracy, using optimized artificial noise placement.
Contribution
It proposes a novel two-way DCE scheme for both reciprocal and non-reciprocal channels, improving upon previous methods by optimizing power allocation to enhance discrimination.
Findings
The scheme effectively degrades UR's channel estimation performance.
Numerical results confirm improved discrimination between LR and UR.
The method is applicable to both reciprocal and non-reciprocal channels.
Abstract
This work examines the use of two-way training to efficiently discriminate the channel estimation performances at a legitimate receiver (LR) and an unauthorized receiver (UR) in a multiple-input multiple-output (MIMO) wireless system. This work improves upon the original discriminatory channel estimation (DCE) scheme proposed by Chang et al where multiple stages of feedback and retraining were used. While most studies on physical layer secrecy are under the information-theoretic framework and focus directly on the data transmission phase, studies on DCE focus on the training phase and aim to provide a practical signal processing technique to discriminate between the channel estimation performances at LR and UR. A key feature of DCE designs is the insertion of artificial noise (AN) in the training signal to degrade the channel estimation performance at UR. To do so, AN must be placed in…
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