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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.

Abstract

As backdoor attacks in UAV-based decentralized federated learning (DFL) grow increasingly stealthy and sophisticated, existing defenses have likewise escalated in complexity. Yet these defenses, which rely heavily on outlier detection, remain vulnerable to carefully crafted backdoors. In UAV-DFL, the lack of global coordination and limited resources further render outlier-based defenses impractical. Against this backdrop, gradient spectral analysis offers a promising alternative. While prior work primarily leverages low-frequency coefficients for pairwise comparisons, it neglects to analyze the intrinsic spectral characteristics of backdoor gradients. Through empirical analysis of existing stealthy attacks, we reveal a key insight: the more effort attackers invest in mimicking benign behaviors, the more distinct the spectral concentration becomes. Motivated by this, we propose Task-Aware Spectral Energy Refine (TASER) -- a decentralized defense framework. To our knowledge, this is the first efficient backdoor defense that utilizes spectral concentration instead of complex outlier detection, enabling mitigation of stealthy attacks by structurally disrupting the backdoor task. To suppress the backdoor task, TASER preserves main-task-relevant frequency coefficients and discards others. We provide theoretical guarantees and demonstrate through experiments that TASER remains effective against stealthy backdoor attacks that bypass outlier-based defenses, achieving attack success rate below 20% and accuracy loss under 5%.