Social Media Authentication and Combating Deepfakes using Semi-fragile Invisible Image Watermarking
Aakash Varma Nadimpalli, Ajita Rattani

TL;DR
This paper introduces a semi-fragile invisible image watermarking method that effectively authenticates media by detecting manipulations like Deepfakes while resisting benign processing and removal attacks, enhancing media security.
Contribution
A novel semi-fragile watermarking framework using critic and adversarial networks for robust media authentication against Deepfakes and attacks.
Findings
High-bit recovery accuracy on benign operations
Effective detection of Deepfake manipulations
Resilience to watermark removal attacks
Abstract
With the significant advances in deep generative models for image and video synthesis, Deepfakes and manipulated media have raised severe societal concerns. Conventional machine learning classifiers for deepfake detection often fail to cope with evolving deepfake generation technology and are susceptible to adversarial attacks. Alternatively, invisible image watermarking is being researched as a proactive defense technique that allows media authentication by verifying an invisible secret message embedded in the image pixels. A handful of invisible image watermarking techniques introduced for media authentication have proven vulnerable to basic image processing operations and watermark removal attacks. In response, we have proposed a semi-fragile image watermarking technique that embeds an invisible secret message into real images for media authentication. Our proposed watermarking…
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