ITITApr 20

Channel Estimation for Rydberg Atomic Quantum Receivers: Unrolled Phase Retrieval from Holographic Snapshots

arXiv:2509.125868.01 citationsh-index: 21
Predicted impact top 87% in IT · last 90 daysOriginality Synthesis-oriented
AI Analysis

This work addresses channel estimation for emerging Rydberg atomic quantum receivers, a domain-specific problem, with an incremental hybrid approach.

A Transformer-based unrolled architecture (URformer) is proposed for channel estimation in Rydberg atomic quantum receivers, solving a non-linear biased phase retrieval problem. It outperforms classic algorithms and black-box neural networks with less pilot overhead.

A model-driven deep learning framework is proposed for channel estimation in Rydberg atomic quantum receivers (RAQRs) based on the measurement of holographic snapshots. Specifically, we develop a Transformer-based unrolling architecture, termed URformer, to solve the non-linear biased phase retrieval problem, which is derived by unrolling a stabilized variant of the expectation-maximization Gerchberg-Saxton (EM-GS) algorithm. Each layer of the proposed URformer incorporates three trainable modules: 1) a learnable filter network that replaces the fixed Bessel kernel in the classic EM-GS algorithm; 2) a trainable gating mechanism that adaptively combines classic updates to ensure training stability; and 3) an efficient channel Transformer module that learns to correct residual errors by capturing non-local channel dependencies. Numerical results demonstrate that the proposed URformer significantly outperforms classic iterative algorithms and conventional black-box neural networks with less pilot overhead.

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