UGAD: Universal Generative AI Detector utilizing Frequency Fingerprints
- URL: http://arxiv.org/abs/2409.07913v1
- Date: Thu, 12 Sep 2024 10:29:37 GMT
- Title: UGAD: Universal Generative AI Detector utilizing Frequency Fingerprints
- Authors: Inzamamul Alam, Muhammad Shahid Muneer, Simon S. Woo,
- Abstract summary: Our study introduces a novel multi-modal approach to detect AI-generated images.
Our approach significantly enhances the accuracy of differentiating between real and AI-generated images.
- Score: 18.47018538990973
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In the wake of a fabricated explosion image at the Pentagon, an ability to discern real images from fake counterparts has never been more critical. Our study introduces a novel multi-modal approach to detect AI-generated images amidst the proliferation of new generation methods such as Diffusion models. Our method, UGAD, encompasses three key detection steps: First, we transform the RGB images into YCbCr channels and apply an Integral Radial Operation to emphasize salient radial features. Secondly, the Spatial Fourier Extraction operation is used for a spatial shift, utilizing a pre-trained deep learning network for optimal feature extraction. Finally, the deep neural network classification stage processes the data through dense layers using softmax for classification. Our approach significantly enhances the accuracy of differentiating between real and AI-generated images, as evidenced by a 12.64% increase in accuracy and 28.43% increase in AUC compared to existing state-of-the-art methods.
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