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Low-Quality Deepfake Detection via Unseen Artifacts | IEEE Journals & Magazine | IEEE Xplore

Low-Quality Deepfake Detection via Unseen Artifacts


Impact Statement:Over recent years, there has been a sharp rise in the use of social media for expressing ideas. Manipulated images/videos are often shared over these platforms with the i...Show More

Abstract:

The proliferation of manipulated media over the Internet has become a major source of concern in recent times. With the wide variety of techniques being used to create fa...Show More
Impact Statement:
Over recent years, there has been a sharp rise in the use of social media for expressing ideas. Manipulated images/videos are often shared over these platforms with the intent of propagating false information to the public for political or personal gains. Since social media platforms, such as WhatsApp, Twitter, and Instagram, employ an implicit compression, the media spread using such platforms is often of low quality. The technology proposed in this research can be used to detect such low-quality fake content in the compressed domain. Once the deep learning model is trained for deepfake detection, it can be easily deployed for filtering content on social media as well as internally by government agencies to identify fake content. Predicting whether a given image/video is fake using the trained model is computationally efficient and can be employed for various applications in real-world scenarios.

Abstract:

The proliferation of manipulated media over the Internet has become a major source of concern in recent times. With the wide variety of techniques being used to create fake media, it has become increasingly difficult to identify such occurrences. While existing algorithms perform well on the detection of such media, limited algorithms take the impact of compression into account. Different social media platforms use different compression factors and algorithms before sharing such images and videos, which amplifies the issues in their identification. Therefore, it has become imperative that fake media detection algorithms work well for data compressed at different factors. To this end, the focus of this article is detecting low-quality fake videos in the compressed domain. The proposed algorithm distinguishes real images and videos from altered ones by using a learned visibility matrix, which enforces the model to see unseen imperceptible artifacts in the data. As a result, the learned m...
Published in: IEEE Transactions on Artificial Intelligence ( Volume: 5, Issue: 4, April 2024)
Page(s): 1573 - 1585
Date of Publication: 31 July 2023
Electronic ISSN: 2691-4581

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