S^2F-Net:A Robust Spatial-Spectral Fusion Framework for Cross-Model AIGC Detection
- URL: http://arxiv.org/abs/2601.12313v1
- Date: Sun, 18 Jan 2026 08:43:27 GMT
- Title: S^2F-Net:A Robust Spatial-Spectral Fusion Framework for Cross-Model AIGC Detection
- Authors: Xiangyu Hu, Yicheng Hong, Hongchuang Zheng, Wenjun Zeng, Bingyao Liu,
- Abstract summary: This paper proposes a cross-model detection framework called S 2 F-Net.<n>Its core lies in exploring and leveraging the inherent spectral discrepancies between real and synthetic textures.<n>We introduce a learnable frequency attention module that adaptively weights and enhances discriminative frequency bands.
- Score: 12.927141899285758
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The rapid development of generative models has imposed an urgent demand for detection schemes with strong generalization capabilities. However, existing detection methods generally suffer from overfitting to specific source models, leading to significant performance degradation when confronted with unseen generative architectures. To address these challenges, this paper proposes a cross-model detection framework called S 2 F-Net, whose core lies in exploring and leveraging the inherent spectral discrepancies between real and synthetic textures. Considering that upsampling operations leave unique and distinguishable frequency fingerprints in both texture-poor and texture-rich regions, we focus our research on the detection of frequency-domain artifacts, aiming to fundamentally improve the generalization performance of the model. Specifically, we introduce a learnable frequency attention module that adaptively weights and enhances discriminative frequency bands by synergizing spatial texture analysis and spectral dependencies.On the AIGCDetectBenchmark, which includes 17 categories of generative models, S 2 F-Net achieves a detection accuracy of 90.49%, significantly outperforming various existing baseline methods in cross-domain detection scenarios.
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