核心概念
The author introduces AS-FIBA, a novel backdoor attack framework tailored for face restoration models, emphasizing imperceptible yet effective attacks through adaptive frequency manipulation in the frequency domain.
摘要
The content discusses the vulnerability of deep learning-based face restoration models to backdoor attacks and introduces AS-FIBA as a novel approach. It highlights the importance of subtle degradation objectives and input-specific triggers in the frequency domain for effective and stealthy attacks.
統計資料
Unlike conventional methods focused on classification tasks, AS-FIBA introduces a unique degradation objective tailored for attacking restoration models.
AS-FIBA employs adaptive frequency manipulation to seamlessly integrate custom triggers into input images.
The low-frequency distance in AS-FIBA is markedly less than in FIBA, underscoring the enhanced stealthiness of the method.