FedTracker introduces a novel framework for protecting FL models by embedding a global watermark and unique local fingerprints. The global watermark mechanism authenticates ownership, while local fingerprints identify the model's origin. The framework addresses challenges of utility preservation during watermark embedding and differentiation between Client models. FedTracker leverages Continual Learning principles to embed watermarks effectively. Experimental results demonstrate its effectiveness in ownership verification, traceability, fidelity, and robustness against attacks.
Till ett annat språk
från källinnehåll
arxiv.org
Djupare frågor