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SPECTRA-Net: Scalable Pipeline for Explainable Cross-domain Tensor Representations for AI-generated Images Detection

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The rapid proliferation of AI-generated images (AIGI) presents a significant challenge to digital information integrity. While human observers and existing detection models struggle to keep pace with the increasing sophistication of generative models, the need for robust, real-time detection systems has become critical. This paper introduces SPECTRA-Net, a scalable pipeline for explainable, cross-domain tensor representations for AIGI detection. Our approach leverages a multi-view representation of images, combining global semantic features from a Vision Foundation Model (VFM), spectral analysis, local patch-based anomaly detection, and statistical descriptors. By fusing these complementary data streams, SPECTRA-Net achieves state-of-the-art performance in both in-domain and cross-domain settings, demonstrating high accuracy and generalization capabilities across a wide range of challenging datasets, including WildFake, Chameleon, and RRDataset. The proposed pipeline not only provides a robust solution for AIGI detection but also offers explainability through artifact localization, paving the way for more trustworthy and reliable content verification in real-world applications.

Sarra Arab, Anfal Achouri, Seif Eddine Bouziane• 2026

Related benchmarks

TaskDatasetResultRank
AI-generated image detectionWildRF--
36
AI-generated image detectionChameleon
ACC85.7
2
Fake Image DetectionRRDataset Original (17K) (test)
Fake Accuracy76.74
2
Fake Image DetectionRRDataset Redigitalized 17K (test)
Fake Accuracy45.36
2
Fake Image DetectionRRDataset Transfer (17K) (test)
Accuracy (Fake)56.53
2
AI-generated image detectionBalanced Dataset
Accuracy92.11
1
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