Deep Learning for 1-Bit Compressed Sensing-based Superimposed CSI Feedback
Chaojin Qing, Qing Ye, Bin Cai, Wenhui Liu, and Jiafan Wang

TL;DR
This paper introduces a deep learning-based scheme to enhance the accuracy and reduce the delay of 1-bit compressed sensing superimposed CSI feedback in FDD massive MIMO systems, addressing existing challenges.
Contribution
It proposes a model-driven deep learning approach with a multi-task detection network and lightweight reconstruction for improved CSI feedback performance.
Findings
Improved accuracy of downlink CSI recovery.
Reduced processing delay compared to traditional methods.
Enhanced robustness against parameter variations.
Abstract
In frequency-division duplexing (FDD) massive multiple-input multiple-output (MIMO) systems, 1-bit compressed sensing (CS)-based superimposed channel state information (CSI) feedback has shown many advantages, while still faces many challenges, such as low accuracy of the downlink CSI recovery and large processing delays. To overcome these drawbacks, this paper proposes a deep learning (DL) scheme to improve the 1-bit compressed sensing-based superimposed CSI feedback. On the user side, the downlink CSI is compressed with the 1-bit CS technique, superimposed on the uplink user data sequences (UL-US), and then sent back to the base station (BS). At the BS, based on the model-driven approach and assisted by the superimposition-interference cancellation technology, a multi-task detection network is first constructed for detecting both the UL-US and downlink CSI. In particular, this…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Advanced MIMO Systems Optimization · Advanced Wireless Communication Technologies
MethodsBalanced Selection
