AuthentiVision π
State-of-the-art Face Authentication Model for Detecting AI-Generated Images
π― Real vs. AI-Generated Face Comparison
Real Face | AI-Generated Face |
π Features
- High accuracy in distinguishing real faces from AI-generated ones
- Multiple feature extraction techniques for robust detection
- Easy-to-use API for quick integration
- Lightweight and efficient inference
- Comprehensive documentation and examples
π Quick Start
git clone https://github.com/TimeLabHub/AuthentiVision.git
cd AuthentiVision
pip install -r requirements.txt
from authentivision import AuthentiVision
# Initialize detector
detector = AuthentiVision()
# Make prediction
label, confidence = detector.predict("path_to_image.jpg")
print(f"Prediction: {label} (Confidence: {confidence:.2f})")
π Documentation
For detailed documentation, please visit our tech blog.
π― Use Cases(Coming soon)
- Identity verification systems
- Social media content moderation
- Digital forensics
- Security applications
π License
This project is licensed under the Apache License 2.0 - see the LICENSE file for details.
π Acknowledgments
- Thanks to all contributors and researchers in the field
- Special thanks to the open-source community
π Citation
If you use AuthentiVision in your research or project, please cite our technical blog
@online{authentivision2024,
title={AuthentiVision: Finding Yourself in the Real World},
author={Haijian Wang and Zhangbei Ding and Yefan Niu and Xiaoming Zhang},
year={2024},
url={https://timelabhub.github.io/},
note={Medium blog post}
}