Synthbuster: Towards Detection of Diffusion Model Generated Images

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE open journal of signal processing Pub Date : 2023-11-29 DOI:10.1109/OJSP.2023.3337714
Quentin Bammey
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Abstract

Synthetically-generated images are getting increasingly popular. Diffusion models have advanced to the stage where even non-experts can generate photo-realistic images from a simple text prompt. They expand creative horizons but also open a Pandora's box of potential disinformation risks. In this context, the present corpus of synthetic image detection techniques, primarily focusing on older generative models like Generative Adversarial Networks, finds itself ill-equipped to deal with this emerging trend. Recognizing this challenge, we introduce a method specifically designed to detect synthetic images produced by diffusion models. Our approach capitalizes on the inherent frequency artefacts left behind during the diffusion process. Spectral analysis is used to highlight the artefacts in the Fourier transform of a residual image, which are used to distinguish real from fake images. The proposed method can detect diffusion-model-generated images even under mild jpeg compression, and generalizes relatively well to unknown models. By pioneering this novel approach, we aim to fortify forensic methodologies and ignite further research into the detection of AI-generated images.
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Synthbuster:检测扩散模型生成的图像
合成图像越来越受欢迎。扩散模型已经发展到非专业人员也能根据简单的文字提示生成逼真图片的阶段。它们拓展了创造性的视野,但也打开了潜在虚假信息风险的潘多拉盒子。在这种情况下,目前的合成图像检测技术主要集中在生成对抗网络(Generative Adversarial Networks)等较早的生成模型上,发现自己并不具备应对这一新兴趋势的能力。认识到这一挑战后,我们推出了一种专门用于检测扩散模型生成的合成图像的方法。我们的方法利用了扩散过程中留下的固有频率伪影。利用频谱分析来突出残留图像傅里叶变换中的伪影,从而区分真假图像。所提出的方法即使在温和的 jpeg 压缩条件下也能检测到扩散模型生成的图像,而且对未知模型的通用性相对较好。通过开创这种新方法,我们旨在强化取证方法,并进一步推动对人工智能生成图像的检测研究。
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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
0
审稿时长
22 weeks
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