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Papers/Faster Than Lies: Real-time Deepfake Detection using Binar...

Faster Than Lies: Real-time Deepfake Detection using Binary Neural Networks

Lanzino Romeo, Fontana Federico, Diko Anxhelo, Marini Marco Raoul, Cinque Luigi

2024-06-07CVPR 2024 6DeepFake DetectionFace Swapping
PaperPDFCode(official)

Abstract

Deepfake detection aims to contrast the spread of deep-generated media that undermines trust in online content. While existing methods focus on large and complex models, the need for real-time detection demands greater efficiency. With this in mind, unlike previous work, we introduce a novel deepfake detection approach on images using Binary Neural Networks (BNNs) for fast inference with minimal accuracy loss. Moreover, our method incorporates Fast Fourier Transform (FFT) and Local Binary Pattern (LBP) as additional channel features to uncover manipulation traces in frequency and texture domains. Evaluations on COCOFake, DFFD, and CIFAKE datasets demonstrate our method's state-of-the-art performance in most scenarios with a significant efficiency gain of up to a $20\times$ reduction in FLOPs during inference. Finally, by exploring BNNs in deepfake detection to balance accuracy and efficiency, this work paves the way for future research on efficient deepfake detection.

Results

TaskDatasetMetricValueModel
3D ReconstructionCOCOFakeAUC0.9986FasterThanLies
3D ReconstructionCOCOFakeAccuracy99.25FasterThanLies
3D ReconstructionDFFDAUC0.9994FasterThanLies
3D ReconstructionDFFDAccuracy0.9895FasterThanLies
3D ReconstructionCIFAKE: Real and AI-Generated Synthetic ImagesAUC99.65FasterThanLies
3D ReconstructionCIFAKE: Real and AI-Generated Synthetic ImagesValidation Accuracy97.29FasterThanLies
3DCOCOFakeAUC0.9986FasterThanLies
3DCOCOFakeAccuracy99.25FasterThanLies
3DDFFDAUC0.9994FasterThanLies
3DDFFDAccuracy0.9895FasterThanLies
3DCIFAKE: Real and AI-Generated Synthetic ImagesAUC99.65FasterThanLies
3DCIFAKE: Real and AI-Generated Synthetic ImagesValidation Accuracy97.29FasterThanLies
DeepFake DetectionCOCOFakeAUC0.9986FasterThanLies
DeepFake DetectionCOCOFakeAccuracy99.25FasterThanLies
DeepFake DetectionDFFDAUC0.9994FasterThanLies
DeepFake DetectionDFFDAccuracy0.9895FasterThanLies
DeepFake DetectionCIFAKE: Real and AI-Generated Synthetic ImagesAUC99.65FasterThanLies
DeepFake DetectionCIFAKE: Real and AI-Generated Synthetic ImagesValidation Accuracy97.29FasterThanLies
3D Shape Reconstruction from VideosCOCOFakeAUC0.9986FasterThanLies
3D Shape Reconstruction from VideosCOCOFakeAccuracy99.25FasterThanLies
3D Shape Reconstruction from VideosDFFDAUC0.9994FasterThanLies
3D Shape Reconstruction from VideosDFFDAccuracy0.9895FasterThanLies
3D Shape Reconstruction from VideosCIFAKE: Real and AI-Generated Synthetic ImagesAUC99.65FasterThanLies
3D Shape Reconstruction from VideosCIFAKE: Real and AI-Generated Synthetic ImagesValidation Accuracy97.29FasterThanLies

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