Detecting Deepfakes with Metric Learning
Title | Detecting Deepfakes with Metric Learning |
Publication Type | Conference Paper |
Year of Publication | 2020 |
Authors | Kumar, A., Bhavsar, A., Verma, R. |
Conference Name | 2020 8th International Workshop on Biometrics and Forensics (IWBF) |
Date Published | April 2020 |
Publisher | IEEE |
ISBN Number | 978-1-7281-6232-4 |
Keywords | data compression, deep learning approaches, DeepFake, deepfake detection, Deepfakes, deepfakes classification, digital media content, face-swapping applications, FaceApp, FaceBlender, fake videos, feature extraction, feature space distance, Human Behavior, human factors, image classification, image texture, learning (artificial intelligence), metric learning approach, Metrics, MixBooth, neural texture dataset, pubcrawl, resilience, Resiliency, Scalability, Snapchat, social media platforms, social networking (online), Triplet Network, triplet network architecture, Video Forensics, work factor metrics |
Abstract | With the arrival of several face-swapping applications such as FaceApp, SnapChat, MixBooth, FaceBlender and many more, the authenticity of digital media content is hanging on a very loose thread. On social media platforms, videos are widely circulated often at a high compression factor. In this work, we analyze several deep learning approaches in the context of deepfakes classification in high compression scenarios and demonstrate that a proposed approach based on metric learning can be very effective in performing such a classification. Using less number of frames per video to assess its realism, the metric learning approach using a triplet network architecture proves to be fruitful. It learns to enhance the feature space distance between the cluster of real and fake videos embedding vectors. We validated our approaches on two datasets to analyze the behavior in different environments. We achieved a state-of-the-art AUC score of 99.2% on the Celeb-DF dataset and accuracy of 90.71% on a highly compressed Neural Texture dataset. Our approach is especially helpful on social media platforms where data compression is inevitable. |
URL | https://ieeexplore.ieee.org/document/9107962 |
DOI | 10.1109/IWBF49977.2020.9107962 |
Citation Key | kumar_detecting_2020 |
- Scalability
- learning (artificial intelligence)
- metric learning approach
- Metrics
- MixBooth
- neural texture dataset
- pubcrawl
- resilience
- Resiliency
- image texture
- Snapchat
- social media platforms
- social networking (online)
- Triplet Network
- triplet network architecture
- Video Forensics
- work factor metrics
- data compression
- image classification
- Human Factors
- Human behavior
- feature space distance
- feature extraction
- fake videos
- FaceBlender
- FaceApp
- face-swapping applications
- digital media content
- deepfakes classification
- Deepfakes
- deepfake detection
- DeepFake
- deep learning approaches