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Main Authors: Sun, Mengyu, Yang, Ziyuan, Zhou, Zunlong, Liu, Junxu, Hu, Haibo, Zhang, Yi
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.18150
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_version_ 1866910232208211968
author Sun, Mengyu
Yang, Ziyuan
Zhou, Zunlong
Liu, Junxu
Hu, Haibo
Zhang, Yi
author_facet Sun, Mengyu
Yang, Ziyuan
Zhou, Zunlong
Liu, Junxu
Hu, Haibo
Zhang, Yi
contents Diffusion models (DMs) are widely used for text-to-image generation, but their strong generative capabilities also raise concerns about unsafe or undesirable content. Concept erasure aims to mitigate these risks by removing specific concepts from pretrained models. However, recent studies show that such methods often suppress rather than fully eliminate target concepts, leaving models vulnerable to awakening attacks. Existing approaches primarily rely on white-box access through optimization or inversion, while concept awakening under black-box constraints remains underexplored. In this work, we revisit the denoising process from a trajectory perspective and show that concept erasure mainly disrupts early-stage text-semantic alignment but does not fully prevent semantic information from propagating along the denoising dynamics. As generation proceeds, the model increasingly depends on the evolving noisy state rather than textual conditions, which creates an opportunity to bypass erased mappings. Motivated by this observation, we propose ConceptAgent, a training-free, black-box, multi-agent framework that awakens erased concepts by initializing the denoising trajectory from surrogate-guided noisy states. Extensive experiments demonstrate that ConceptAgent enables accurate and controllable awakening of erased concepts under black-box settings without access to model parameters, gradients, or internal representations. These results highlight fundamental limitations of current concept erasure methods and provide new insights into the dynamic nature of semantic control in DMs.
format Preprint
id arxiv_https___arxiv_org_abs_2605_18150
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Whispers in the Noise: Surrogate-Guided Concept Awakening via a Multi-Agent Framework
Sun, Mengyu
Yang, Ziyuan
Zhou, Zunlong
Liu, Junxu
Hu, Haibo
Zhang, Yi
Artificial Intelligence
Diffusion models (DMs) are widely used for text-to-image generation, but their strong generative capabilities also raise concerns about unsafe or undesirable content. Concept erasure aims to mitigate these risks by removing specific concepts from pretrained models. However, recent studies show that such methods often suppress rather than fully eliminate target concepts, leaving models vulnerable to awakening attacks. Existing approaches primarily rely on white-box access through optimization or inversion, while concept awakening under black-box constraints remains underexplored. In this work, we revisit the denoising process from a trajectory perspective and show that concept erasure mainly disrupts early-stage text-semantic alignment but does not fully prevent semantic information from propagating along the denoising dynamics. As generation proceeds, the model increasingly depends on the evolving noisy state rather than textual conditions, which creates an opportunity to bypass erased mappings. Motivated by this observation, we propose ConceptAgent, a training-free, black-box, multi-agent framework that awakens erased concepts by initializing the denoising trajectory from surrogate-guided noisy states. Extensive experiments demonstrate that ConceptAgent enables accurate and controllable awakening of erased concepts under black-box settings without access to model parameters, gradients, or internal representations. These results highlight fundamental limitations of current concept erasure methods and provide new insights into the dynamic nature of semantic control in DMs.
title Whispers in the Noise: Surrogate-Guided Concept Awakening via a Multi-Agent Framework
topic Artificial Intelligence
url https://arxiv.org/abs/2605.18150