TASER: Task-Aware Spectral Energy Refine for Backdoor Suppression in UAV Swarms Decentralized Federated Learning
arXiv cs.AI / 3/12/2026
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Key Points
- The paper studies backdoor attacks in UAV-based decentralized federated learning (DFL), noting that stealthy attacks can bypass outlier-based defenses and that lack of global coordination and limited resources make such defenses impractical in UAV swarms.
- It proposes TASER (Task-Aware Spectral Energy Refine), a decentralized defense framework that uses spectral concentration of gradients to suppress backdoors while preserving main-task frequency components.
- TASER is claimed to be the first efficient defense leveraging spectral concentration rather than outlier detection, with theoretical guarantees for defense effectiveness.
- Experimental results show TASER achieving an attack success rate below 20% and reducing accuracy loss to under 5% on tested scenarios.
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