--- title: DeepGuard AI Face Authenticator emoji: 🛡️ colorFrom: green colorTo: blue sdk: gradio sdk_version: 3.50.2 app_file: app.py pinned: false license: mit tags: - deepfake-detection - computer-vision - tensorflow - mlops short_description: Deepfake detection with 88% accuracy --- # DeepGuard: AI Face Authenticator A production-grade deep learning system for detecting AI-generated (deepfake) faces, built with a complete MLOps pipeline. ## Overview DeepGuard leverages transfer learning with the Xception architecture to identify synthetic faces generated by GANs (Generative Adversarial Networks). The model achieves 88% accuracy with a 95% ROC-AUC score on StyleGAN-generated content. ## Model Performance | Metric | Value | |--------|-------| | Test Accuracy | 88% | | ROC-AUC Score | 95% | | Training Dataset | 140,000 images | | Architecture | XceptionTransfer | | Input Resolution | 128x128 pixels | ## FFT Frequency Analysis Interpretation The Fast Fourier Transform visualization provides forensic insight into image authenticity. | Pattern | Interpretation | |---------|----------------| | Bright center spot | Normal low-frequency content (smooth areas) | | Radiating spokes | Edge directions in the original image | | Random noise distribution | Natural texture typical of real photographs | | Grid or cross artifacts | Potential GAN fingerprint indicating synthetic generation | Note: GAN artifacts in the frequency domain are subtle and serve as a supplementary forensic tool. ## Known Limitations This model is trained on StyleGAN-generated faces. Detection accuracy may be reduced for: - Images from diffusion models (Stable Diffusion, Midjourney, DALL-E) - Non-face subjects or full-body photographs - Heavily compressed or filtered images ## MLOps Pipeline | Component | Technology | |-----------|------------| | Data Versioning | DVC | | Experiment Tracking | MLflow + DagsHub | | Model Training | TensorFlow / Keras | | Deployment | Hugging Face Spaces | ## Repository [GitHub: DeepGuard-MLOps-Pipeline](https://github.com/HarshTomar1234/DeepGuard-MLOps-Pipeline) ## License MIT License