Method for DeepFake Detection Using Convolutional Neural Networks
- Autores: Volkova S.S.1
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Afiliações:
- Vologda State University
- Edição: Nº 2 (2022)
- Páginas: 62-73
- Seção: Machine Learning, Neural Networks
- URL: https://ogarev-online.ru/2071-8594/article/view/270311
- DOI: https://doi.org/10.14357/20718594220206
- ID: 270311
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Resumo
The article proposed the face anti-digital-spoofing countermeasures method for improving the protection of the facial biometric system. The DeepFake detection method is based on the convolutional neural networks, trained on a large dataset that contains different fake types with different qualities. This has resulted in at least 99% of detection quality. The suggested method can be used to increase the protection of facial biometric systems by reducing the risk of unauthorized access.
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Sobre autores
Svetlana Volkova
Vologda State University
Autor responsável pela correspondência
Email: malysheva.svetlana.s@gmail.com
Candidate of technical sciences. Associate professor, Department of applied mathematics
Rússia, VologdaBibliografia
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