defense 2026

Curvelet-Based Frequency-Aware Feature Enhancement for Deepfake Detection

Salar Adel Sabri , Ramadhan J. Mstafa

0 citations · Science Journal of University ...

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Published on arXiv

2604.12028

Output Integrity Attack

OWASP ML Top 10 — ML09

Key Finding

Achieves 98.48% accuracy and 99.96% AUC on FaceForensics++ low compression while maintaining strong performance under high compression

Curvelet-Based Frequency-Aware Feature Enhancement

Novel technique introduced


The proliferation of sophisticated generative models has significantly advanced the realism of synthetic facial content, known as deepfakes, raising serious concerns about digital trust. Although modern deep learning-based detectors perform well, many rely on spatial-domain features that degrade under compression. This limitation has prompted a shift toward integrating frequency-domain representations with deep learning to improve robustness. Prior research has explored frequency transforms such as Discrete Cosine Transform (DCT), Fast Fourier Transform (FFT), and Wavelet Transform, among others. However, to the best of our knowledge, the Curvelet Transform, despite its superior directional and multiscale properties, remains entirely unexplored in the context of deepfake detection. In this work, we introduce a novel Curvelet-based detection approach that enhances feature quality through wedge-level attention and scale-aware spatial masking, both trained to selectively emphasize discriminative frequency components. The refined frequency cues are reconstructed and passed to a modified pretrained Xception network for classification. Evaluated on two compression qualities in the challenging FaceForensics++ dataset, our method achieves 98.48% accuracy and 99.96% AUC on FF++ low compression, while maintaining strong performance under high compression, demonstrating the efficacy and interpretability of Curvelet-informed forgery detection.


Key Contributions

  • First application of Curvelet Transform to deepfake detection with wedge-level attention mechanism
  • Scale-aware spatial masking for selective emphasis of discriminative frequency components
  • Robust performance under compression artifacts (98.48% accuracy on FF++ low compression)

🛡️ Threat Analysis

Output Integrity Attack

Detects AI-generated synthetic facial images (deepfakes) to verify content authenticity — core output integrity and content provenance task.


Details

Domains
visiongenerative
Model Types
cnngan
Threat Tags
inference_timedigital
Datasets
FaceForensics++
Applications
deepfake detectionfacial forgery detection