基于颜色噪声的拼接检测与定位方法

C. Destruel, V. Itier, O. Strauss, W. Puech
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引用次数: 7

摘要

由于我们能够轻松地复制和粘贴图像,被修改或更具体地拼接在一起的图像已经侵入了数字领域。为了检测这类伪造图像,数字图像处理界提出了新的自动算法,旨在帮助人类操作员发现被操纵的图像。在本文中,我们重点研究了局部检测系统,该系统考虑哪些篡改区域产生局部统计效应,而这些统计效应不会影响相邻区域或整个图像。我们建议研究如何定义局部块,考虑到它们的大小和重叠,影响最终的像素检测。我们还提出了新的特征,这是一种将图像噪声视为彩色信号的原始方法。事实上,在非伪造图像中,三个颜色通道R、G和b之间的噪声具有很高的相关性。我们表明,可以定义一个最佳配置,在这种情况下,在未压缩和JPEG模式下,使用相同的测试数据集,所提出的方法优于先前提出的几种方法。注意,在本文中,我们只关注特征提取,而没有使用机器学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Color Noise-Based Feature for Splicing Detection and Localization
Images that have been altered and more specifically spliced together have invaded the digital domain due to the ease with which we are able to copy and paste them. To detect such forgeries the digital image processing community is proposing new automatic algorithms designed to help human operators reveal manipulated images. In this paper, we focus on a local detection system, which considers which tampered areas produce local statistical effects that do not impact neighboring areas or the image as a whole. We propose to study how the definition of local blocks, considering their size and overlap, impacts final pixel detection. We also propose new features which are an original way to consider the noise of an image as a colored signal. Indeed, in a non-forged image, there is a high correlation of noise between the three color channels R, G and B. We show that an optimal configuration can be defined and in this case the proposed approach outperforms several previously proposed methods using the same tested dataset, in uncompressed and JPEG modes. Note, in this paper we only focus on feature extraction without using machine learning.
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