Python implementation of ADD: Frequency Attention and Multi-View based Knowledge Distillation to Detect Low-Quality Compressed Deepfake Images, AAAI2022.

Overview

ADD: Frequency Attention and Multi-View based Knowledge Distillation to Detect Low-Quality Compressed Deepfake Images

GitHub top languageGitHub last commitGitHub repo size
Binh M. Le & Simon S. Woo, "ADD: Frequency Attention and Multi-View based Knowledge Distillation to Detect Low-Quality Compressed Deepfake Images."
Thirty-Sixth AAAI Conference on Artificial Intelligence. 2022. Canada

Overview of our framework

overall pipeline

Installation

  • Ubuntu 18.04.5 LTS
  • CUDA 10.2
  • Python 3.6.10
  • python packages are detailed separately in requirements.txt.

Datasets

Grad-CAM

Grad-CAM

Star if you find it useful.

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