Content area

Abstract

As face forgeries generated by deep neural networks become increasingly sophisticated, detecting face manipulations in digital media has posed a significant challenge, underscoring the importance of maintaining digital media integrity and combating visual disinformation. Current detection models, predominantly based on supervised training with domain-specific data, often falter against forgeries generated by unencountered techniques. In response to this challenge, we introduce Trident,a face forgery detection framework that employs triplet learning with a Siamese network architecture for enhanced adaptability across diverse forgery methods. Tridentis trained on curated triplets to isolate nuanced differences of forgeries, capturing fine-grained features that distinguish pristine samples from manipulated ones while controlling for other variables. To further enhance generalizability, we incorporate domain-adversarial training with a Forgery Discriminator. This adversarial component guides our embedding model towards forgery-agnostic representations, improving its robustness to unseen manipulations. In addition, we prevent gradient flow from the classifier head to the embedding model, avoiding overfitting induced by artifacts peculiar to certain forgeries. Comprehensive evaluations across multiple benchmarks and ablation studies demonstrate the effectiveness of our framework.

Details

1010268
Title
Generalizable Face Forgery Detection with Metric Learning and Domain-Adversarial Training
Alternate title
Metri̇k Öğrenme ve Alan-çeki̇şmeli̇ Eği̇ti̇m i̇le Genelleşti̇ri̇lebi̇li̇r Yüz Sahteci̇li̇ği̇ Tespi̇ti̇
Number of pages
75
Publication year
2025
Degree date
2025
School code
1159
Source
DAI-A 87/1(E), Dissertation Abstracts International
ISBN
9798290652306
University/institution
Bilkent Universitesi (Turkey)
University location
Turkey
Degree
Ph.D.
Source type
Dissertation or Thesis
Language
English
Document type
Dissertation/Thesis
Dissertation/thesis number
32150969
ProQuest document ID
3235007799
Document URL
https://www.proquest.com/dissertations-theses/generalizable-face-forgery-detection-with-metric/docview/3235007799/se-2?accountid=208611
Copyright
Database copyright ProQuest LLC; ProQuest does not claim copyright in the individual underlying works.
Database
ProQuest One Academic