MU-SHOT-Fi: Self-Supervised Multi-User Wi-Fi Sensing with Source-free Unsupervised Domain Adaptation
Ahmed Y. Radwan, Hina Tabassum

TL;DR
MU-SHOT-Fi is a novel self-supervised framework enabling Wi-Fi human activity recognition across diverse environments without source data, using domain-invariant features and occupancy-aware adaptation.
Contribution
It introduces a source-free unsupervised domain adaptation method with occupancy-weighted information maximization and spatial self-supervision for multi-user Wi-Fi sensing.
Findings
Effectively recovers activity classification across large domain shifts.
Maintains accurate occupancy estimation during adaptation.
Prevents model collapse towards dominant classes.
Abstract
Deep learning has been widely adopted for WiFi CSI-based human activity recognition (HAR) due to its ability to learn spatio-temporal features in a privacy-preserving and cost-effective manner. However, DL-based models generalize poorly across environments, a challenge amplified in multi-user settings where overlapping activities cause CSI entanglement and domain shifts. Practical deployments often limit access to labeled source data due to privacy constraints, motivating source-free adaptation using only unlabeled target-domain CSI and a pre-trained source model. In this paper, we propose MU-SHOT-Fi, a source-free unsupervised domain adaptation framework for single- and multi-user Wi-Fi sensing. MU-SHOT-Fi employs permutation-invariant set prediction with Hungarian matching during source training, followed by frozen-classifier backbone adaptation in the target domain. To enable stable…
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