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FerretNet: Efficient Synthetic Image Detection via Local Pixel Dependencies

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The increasing realism of synthetic images generated by advanced models such as VAEs, GANs, and LDMs poses significant challenges for synthetic image detection. To address this issue, we explore two artifact types introduced during the generation process: (1) latent distribution deviations and (2) decoding-induced smoothing effects, which manifest as inconsistencies in local textures, edges, and color transitions. Leveraging local pixel dependencies (LPD) properties rooted in Markov Random Fields, we reconstruct synthetic images using neighboring pixel information to expose disruptions in texture continuity and edge coherence. Building upon LPD, we propose FerretNet, a lightweight neural network with only 1.1M parameters that delivers efficient and robust synthetic image detection. Extensive experiments demonstrate that FerretNet, trained exclusively on the 4-class ProGAN dataset, achieves an average accuracy of 97.1% on an open-world benchmark comprising 22 generative models. Our code and datasets are publicly available at https://github.com/xigua7105/FerretNet.

Shuqiao Liang, Jian Liu, Renzhang Chen, Quanlong Guan• 2025

Related benchmarks

TaskDatasetResultRank
AI-generated image detectionChameleon
Accuracy69.38
127
AI Image DetectionMidjourney
Accuracy73.66
51
Generated Image DetectionWukong
Accuracy87.48
41
AI-generated image detectionBigGAN
mAP91.06
39
AI-generated image detectionProGAN
mAP99.95
39
AI-generated image detectionSD v1.5
Accuracy91.13
36
Generated Image DetectionGenImage v1.4 (test)
Average AP100
34
AI-generated image detectionGLIDE
Accuracy86.12
34
AI-generated image detectionCycleGAN
mAP98.34
29
AI-generated image detectionStyleGAN
mAP0.9863
29
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