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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.

Abstract

We propose a WiFi Channel State Information (CSI) sensing framework for multi-station deployments that addresses two fundamental challenges in practical CSI sensing: station-wise feature missingness and limited labeled data. Feature missingness is commonly handled by resampling unevenly spaced CSI measurements or by reconstructing missing samples, while label scarcity is mitigated by data augmentation or self-supervised representation learning. However, these techniques are typically developed in isolation and do not jointly address long-term, structured station unavailability together with label scarcity. To bridge this gap, we explicitly incorporate station unavailability into both representation learning and downstream model training. Specifically, we adapt cross-modal self-supervised learning (CroSSL), a representation learning framework originally designed for time-series sensory data, to multi-station CSI sensing in order to learn representations that are inherently invariant to station-wise feature missingness from unlabeled data. Furthermore, we introduce Station-wise Masking Augmentation (SMA) during downstream model training, which exposes the model to realistic station unavailability patterns under limited labeled data. Our experiments show that neither missingness-invariant pre-training nor station-wise augmentation alone is sufficient; their combination is essential to achieve robust performance under both station-wise feature missingness and label scarcity. The proposed framework provides a practical and robust foundation for multi-station WiFi CSI sensing in real-world deployments.