Computer Science - Computer Vision and Pattern Recognition Computer Science - Cryptography and Security Computer Science - Learning
Image synthesis has seen significant advancements with the advent of
diffusion-based generative models like Denoising Diffusion Probabilistic Models
(DDPM) and text-to-image diffusion models. Despite their efficacy, there is a
dearth of research dedicated to detecting diffusion-generated images, which
could pose potential security and privacy risks. This paper addresses this gap
by proposing a novel detection method called Stepwise Error for
Diffusion-generated Image Detection (SeDID). Comprising statistical-based
$\text{SeDID}_{\text{Stat}}$ and neural network-based
$\text{SeDID}_{\text{NNs}}$, SeDID exploits the unique attributes of diffusion
models, namely deterministic reverse and deterministic denoising computation
errors. Our evaluations demonstrate SeDID's superior performance over existing
methods when applied to diffusion models. Thus, our work makes a pivotal
contribution to distinguishing diffusion model-generated images, marking a
significant step in the domain of artificial intelligence security.
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Details
Title
Exposing the Fake: Effective Diffusion-Generated Images Detection
Creators
Ruipeng Ma
Jinhao Duan
Fei Kong
Xiaoshuang Shi
Kaidi Xu
Publication Details
arXiv.org
Resource Type
Preprint
Language
English
Academic Unit
Computer Science (Computing)
Other Identifier
991021871454104721
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