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On the Robustness of Latent Diffusion Models

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arxiv 2306.08257 v1 pith:MAVUFI3P submitted 2023-06-14 cs.CV cs.CR

On the Robustness of Latent Diffusion Models

classification cs.CV cs.CR
keywords modelsdiffusionlatentrobustnessdatasetimagewhite-boxattacks
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Latent diffusion models achieve state-of-the-art performance on a variety of generative tasks, such as image synthesis and image editing. However, the robustness of latent diffusion models is not well studied. Previous works only focus on the adversarial attacks against the encoder or the output image under white-box settings, regardless of the denoising process. Therefore, in this paper, we aim to analyze the robustness of latent diffusion models more thoroughly. We first study the influence of the components inside latent diffusion models on their white-box robustness. In addition to white-box scenarios, we evaluate the black-box robustness of latent diffusion models via transfer attacks, where we consider both prompt-transfer and model-transfer settings and possible defense mechanisms. However, all these explorations need a comprehensive benchmark dataset, which is missing in the literature. Therefore, to facilitate the research of the robustness of latent diffusion models, we propose two automatic dataset construction pipelines for two kinds of image editing models and release the whole dataset. Our code and dataset are available at \url{https://github.com/jpzhang1810/LDM-Robustness}.

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  1. VOID: Defeating Unauthorized Mimicry in Latent Diffusion Models

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    VOID defeats mimicry in LDMs via stochasticity manipulation in the diffusion pipeline, raising average FID from 113 to 365 across evaluations.