基于改变痕迹网的复制-移动图像伪造检测与定位

M. Sabeena, L. Abraham
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引用次数: 1

摘要

社交媒体作为传统新闻来源的现代替代品的流行,导致了假新闻的兴起,假新闻通常使用经过篡改的照片。这一趋势往往是由于高科技相机和手机的成本迅速下降,这鼓励了计算机图像的快速创建。操纵数字图像的便利性使图像伪造成为一个普遍的担忧。由于Adobe Photoshop等商业图像修改程序的快速发展,每天共享的修改照片数量大大增加。这种现象具有有害的影响,在许多实际应用中降低了可靠性并产生了错误的信念。本文提出了一种用于检测数字图像中复制-移动伪造的深度学习策略。在这里,我们使用了两个深度学习模型来识别数字照片中的复制移动欺诈,即Buster Net和change Trace Net。CoMoFoD数据集用于评估两种模型的性能。实验结果表明,与Buster Net模型的96.9%的准确率相比,change Trace Net模型在识别照片中的赝品方面的准确率为98.6%,优于Buster Net模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Copy-move Image Forgery Detection and Localization Using Alteration Trace Net
The prevalence of social media as a modern substitute for conventional news sources has led to the rise of fake news, which usually uses tampered photographs. This trend is frequently brought on by the rapidly falling cost of high-tech cameras and cell phones, which encourage the fast creation of computerized images. The ease of manipulating digital images has made image forgery a common worry. The volume of altered photos shared daily has greatly increased due to the quick development of commercial image altering programs like Adobe Photoshop. This phenomenon has detrimental effects, diminishing reliability and producing false beliefs in many real-world applications. This paper suggests a deep learning strategy for detecting copy-move forgeries in digital images. Here, we employ two deep learning models to identify copy move fraud in digital photos, namely Buster Net and Alteration Trace Net. The CoMoFoD dataset is used to assess the performance of the two models. The experimental results demonstrate that the Alteration Trace Net model outperforms the Buster Net model with 98.6% accuracy in identifying forgeries in photos, compared to the Buster Net model's accuracy of 96.9%.
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