CFD-HAR: User-controllable Privacy through Conditional Feature Disentanglement
arXiv cs.LG / 3/13/2026
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Key Points
- The CFD-HAR paper proposes user-controllable privacy for sensor-based HAR by disentangling activity and sensitive attributes in the latent space using conditional feature disentanglement.
- It compares CFD-HAR to few-shot HAR using autoencoder-based representation learning, showing that CFD-HAR provides explicit privacy controls while autoencoder approaches offer label efficiency but weaker privacy safeguards.
- It analyzes security implications in continual IoT settings, highlighting vulnerabilities to representation leakage and embedding-level attacks, and discusses trade-offs between privacy, data efficiency, and robustness.
- It concludes that neither approach fully satisfies next-generation IoT HAR requirements and outlines directions toward unified frameworks that jointly optimize privacy preservation, few-shot adaptability, and robustness.



