Multi-Station WiFi CSI Sensing Framework Robust to Station-wise Feature Missingness and Limited Labeled Data
arXiv cs.LG / 3/13/2026
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Key Points
- The paper addresses station-wise feature missingness and limited labeled data in multi-station WiFi CSI sensing.
- It adapts CroSSL, a cross-modal self-supervised learning framework, to multi-station CSI to learn representations invariant to station missingness from unlabeled data.
- It introduces Station-wise Masking Augmentation (SMA) for downstream training to expose models to realistic station unavailability under limited labels.
- The experiments show that combining missingness-invariant pre-training and SMA is essential for robust performance under both challenges.
- The proposed framework offers a practical foundation for robust multi-station WiFi CSI sensing in real-world deployments.
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