ITITMay 19

SPA-MAE: A Physics-Guided CSI Foundation Model for Wireless Physical Layer

arXiv:2605.198492.8
Predicted impact top 60% in IT · last 90 daysOriginality Incremental advance
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This work addresses the need for generalizable deep learning models in 6G physical layer communications, where existing task-specific models lack cross-task generalization.

SPA-MAE introduces a physics-guided CSI foundation model for wireless physical layer tasks, outperforming state-of-the-art models with fewer parameters, especially under low-SNR and limited-data conditions.

Deep learning (DL) has been widely used in future 6G physical layer communications, but task-specific DL models are difficult to generalize across different physical layer tasks. Recently emerging wireless foundation models demonstrate strong generalization capability. However, existing methods mainly adapt pretrained language/vision models or rely on CSI reconstruction objectives for pretraining, with limited use of channel knowledge, and thus have limited performance. To address this limitation, we propose SPA-MAE, a physics-guided wireless foundation model by exploiting the adapted MAE backbone and channel knowledge. A physical prior module is developed to provide two complementary guidance signals in the pretraining stage. Specifically, the parameter-aware guidance branch extracts features from explicit multipath parameters and encourages the encoder output to align them, while the structure-aware guidance branch encourages the encoder to capture the sparse transformed-domain CSI structure obtained after a 2D FFT. After end-to-end learning, the MAE encoder will be retained for downstream tasks. Experiments on four wireless tasks show that SPA-MAE outperforms state-of-the-art CSI foundation models with smaller number of parameters, especially under low-SNR and limited-data conditions.

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