SpecXNet: A Dual-Domain Convolutional Network for Robust Deepfake Detection
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초록

The increasing realism of content generated by GANs and diffusion models has made deepfake detection significantly more challenging. Existing approaches often focus solely on spatial or frequency-domain features, limiting their generalization to unseen manipulations. We propose the Spectral Cross-Attentional Network (SpecXNet), a dual-domain architecture for robust deepfake detection. The core Dual-Domain Feature Coupler (DDFC) decomposes features into a local spatial branch for capturing texture-level anomalies and a global spectral branch that employs Fast Fourier Transform to model periodic inconsistencies. This dual-domain formulation allows SpecXNet to jointly exploit localized detail and global structural coherence, which are critical for distinguishing authentic from manipulated images. We also introduce the Dual Fourier Attention (DFA) module, which dynamically fuses spatial and spectral features in a content-aware manner. Built atop a modified XceptionNet backbone, we embed the DDFC and DFA modules within a separable convolution block. Extensive experiments on multiple deepfake benchmarks show that SpecXNet achieves state-of-the-art accuracy, particularly under cross-dataset and unseen manipulation scenarios, while maintaining real-time feasibility. Our results highlight the effectiveness of unified spatial-spectral learning for robust and generalizable deepfake detection. To ensure reproducibility, we release the full code on https://github.com/inzamamulDU/SpecXNet.

키워드

deepfake detectiondual-domain learningfake image classificationfrequency domainsecurity
제목
SpecXNet: A Dual-Domain Convolutional Network for Robust Deepfake Detection
저자
Alam, InzamamulIslam, Md TanvirWoo, Simon S.
DOI
10.1145/3746027.3755707
발행일
2025
유형
Proceedings Paper
저널명
MM 2025 - Proceedings of the 33rd ACM International Conference on Multimedia, Co-Located with MM 2025
페이지
11667 ~ 11676