CVAIMMJan 27, 2021

Detecting Deepfake Videos Using Euler Video Magnification

arXiv:2101.11563v118 citations
Originality Synthesis-oriented
AI Analysis

This addresses the challenge of identifying manipulated videos that could spread misinformation, but it is incremental as it builds on existing Euler video magnification methods.

The paper tackles the problem of detecting deepfake videos by using Euler video magnification to extract hidden features like skin pulsation and subtle motions, and trains three models to classify videos, comparing results with existing techniques.

Recent advances in artificial intelligence make it progressively hard to distinguish between genuine and counterfeit media, especially images and videos. One recent development is the rise of deepfake videos, based on manipulating videos using advanced machine learning techniques. This involves replacing the face of an individual from a source video with the face of a second person, in the destination video. This idea is becoming progressively refined as deepfakes are getting progressively seamless and simpler to compute. Combined with the outreach and speed of social media, deepfakes could easily fool individuals when depicting someone saying things that never happened and thus could persuade people in believing fictional scenarios, creating distress, and spreading fake news. In this paper, we examine a technique for possible identification of deepfake videos. We use Euler video magnification which applies spatial decomposition and temporal filtering on video data to highlight and magnify hidden features like skin pulsation and subtle motions. Our approach uses features extracted from the Euler technique to train three models to classify counterfeit and unaltered videos and compare the results with existing techniques.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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