Section 01
Introduction: Core Exploration of Deepfake Detection Technology Based on Multimodal VAE
This project explores the use of multimodal Variational Autoencoders (VAE) for Deepfake detection, combining image generation and discriminative capabilities to improve the recognition of forged content. Addressing the limitations of traditional detection methods in dealing with the new generation of Deepfakes, this technology provides a detection path that does not require training on forged samples and has interpretability through innovative approaches such as reconstruction error, latent space distribution modeling, and multimodal information fusion, and contributes open-source to the AI security community.