2023
DOI: 10.7717/peerj-cs.1359
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Neural noiseprint transfer: a generic noiseprint-based counter forensics framework

Abstract: A noiseprint is a camera-related artifact that can be extracted from an image to serve as a powerful tool for several forensic tasks. The noiseprint is built with a deep learning data-driven approach that is trained to produce unique noise residuals with clear traces of camera-related artifacts. This data-driven approach results in a complex relationship that governs the noiseprint with the input image, making it challenging to attack. This article proposes a novel neural noiseprint transfer framework for nois… Show more

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References 39 publications
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