
Anonymizing Adversarial Perturbation (AAP) for wearable sensor data hides identity signatures while preserving utility across multiple tasks. By injecting minimal, targeted noise in both time and frequency domains, AAP, F-AAP and MF-AAP reduce person-identification accuracy to chance yet retain or improve activity, gender and position recognition, enabling on-device, real-time privacy protection.
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