4.2 Review

A Survey on Deepfake Video Detection

Journal

IET BIOMETRICS
Volume 10, Issue 6, Pages 607-624

Publisher

WILEY
DOI: 10.1049/bme2.12031

Keywords

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Funding

  1. Collaborative Innovation Centre of Atmospheric Environment and Equipment Technology (CICAEET) fund, China
  2. Priority Academic Programme Development of Jiangsu Higher Education Institutions
  3. '333' project of Jiangsu Province
  4. Qinglan Project of Jiangsu Province
  5. National Natural Science Foundation of China [61702276, 61772283, U1936118, 61601236, 61602253, 61672294, U1836208]
  6. National Key R&D Programme of China [2018YFB1003205]
  7. Ministry of Education of Korea
  8. Jiangsu Basic Research Programs-Natural Science Foundation [BK20181407]
  9. Six peak talent project of Jiangsu Province [R2016L13]

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Deepfake videos generated by deep learning algorithms have raised widespread concerns due to their potential threats to social stability. Current detection methods are not yet sufficient for real-world applications, and future research should focus more on generalization and robustness.
Recently, deepfake videos, generated by deep learning algorithms, have attracted widespread attention. Deepfake technology can be used to perform face manipulation with high realism. So far, there have been a large amount of deepfake videos circulating on the Internet, most of which target at celebrities or politicians. These videos are often used to damage the reputation of celebrities and guide public opinion, greatly threatening social stability. Although the deepfake algorithm itself has no attributes of good or evil, this technology has been widely used for negative purposes. To prevent it from threatening human society, a series of research have been launched, including developing detection methods and building large-scale benchmarks. This review aims to demonstrate the current research status of deepfake video detection, especially, generation process, several detection methods and existing benchmarks. It has been revealed that current detection methods are still insufficient to be applied in real scenes, and further research should pay more attention to the generalization and robustness.

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