基于学习的图像编码的安全性和法医学探索

Deepayan Bhowmik, Mohamed Elawady, Keiller Nogueira
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引用次数: 1

摘要

媒体压缩技术的进步表明了推动未来媒体编码标准的巨大潜力,例如,联合摄影专家组基于学习的图像编码技术(JPEG AI)和联合视频专家组(JVET)基于深度神经网络(DNN)的视频编码。这些编解码器实际上代表了一种新的媒体格式。作为一个可怕的后果,传统的媒体安全和取证技术将不再有用。本文对传统水印在两种基于学习的图像编码中的有效性进行了初步研究。结果表明,传统的水印方法已不再有效。我们还通过提出一种基于残差噪声的源识别算法来研究基于学习的编解码器中各种DNN架构的取证痕迹,该算法的准确率达到79%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Security and Forensics Exploration of Learning-based Image Coding
Advances in media compression indicate significant potential to drive future media coding standards, e.g., Joint Photographic Experts Group's learning-based image coding technologies (JPEG AI) and Joint Video Experts Team's (JVET) deep neural networks (DNN) based video coding. These codecs in fact represent a new type of media format. As a dire consequence, traditional media security and forensic techniques will no longer be of use. This paper proposes an initial study on the effectiveness of traditional watermarking on two state-of-the-art learning based image coding. Results indicate that traditional watermarking methods are no longer effective. We also examine the forensic trails of various DNN architectures in the learning based codecs by proposing a residual noise based source identification algorithm that achieved 79% accuracy.
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