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Hauptverfasser: Zheng, Hongrui, Wang, Liejun, Guo, Zhiqing
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.00443
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author Zheng, Hongrui
Wang, Liejun
Guo, Zhiqing
author_facet Zheng, Hongrui
Wang, Liejun
Guo, Zhiqing
contents The advancement of generalized deepfake disruption is constrained by the interruption imbalance, a fundamental bottleneck inherent to the generation of universal perturbations. We reveal that conventional static gradient normalization fundamentally struggles to resolve architectural conflicts, causing the optimization to bias towards susceptible models while neglecting resistant ones. We argue that achieving high and uniform effectiveness requires resolving this imbalance by reaching an adaptive equilibrium. We propose the Adaptive Equilibrium Framework (AEF), which employs a dynamic weighting mechanism that utilizes real-time loss feedback to adaptively assign greater interruption weights to the most resistant models. This approach shifts the optimization from an average-case problem to finding a dynamic balance, driving the perturbation to a uniformly effective equilibrium state. Comprehensive experiments validate that AEF achieves a more balanced interruption performance, maintaining a consistent interruption success rate across the evaluated diverse architectures.
format Preprint
id arxiv_https___arxiv_org_abs_2605_00443
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Adaptive Equilibrium: Dynamic Weighting Framework for Generalized Interruption of DeepFake Models
Zheng, Hongrui
Wang, Liejun
Guo, Zhiqing
Machine Learning
Computer Vision and Pattern Recognition
The advancement of generalized deepfake disruption is constrained by the interruption imbalance, a fundamental bottleneck inherent to the generation of universal perturbations. We reveal that conventional static gradient normalization fundamentally struggles to resolve architectural conflicts, causing the optimization to bias towards susceptible models while neglecting resistant ones. We argue that achieving high and uniform effectiveness requires resolving this imbalance by reaching an adaptive equilibrium. We propose the Adaptive Equilibrium Framework (AEF), which employs a dynamic weighting mechanism that utilizes real-time loss feedback to adaptively assign greater interruption weights to the most resistant models. This approach shifts the optimization from an average-case problem to finding a dynamic balance, driving the perturbation to a uniformly effective equilibrium state. Comprehensive experiments validate that AEF achieves a more balanced interruption performance, maintaining a consistent interruption success rate across the evaluated diverse architectures.
title Adaptive Equilibrium: Dynamic Weighting Framework for Generalized Interruption of DeepFake Models
topic Machine Learning
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.00443