Discrete Cosine Transform Residual Feature Based Filtering Forgery and Splicing Detection in JPEG Images

A. Roy, Diangarti Bhalang Tariang, R. Chakraborty, R. Naskar
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引用次数: 7

Abstract

Digital images are one of the primary modern media for information interchange. However, digital images are vulnerable to interception and manipulation due to the wide availability of image editing software tools. Filtering forgery detection and splicing detection are two of the most important problems in digital image forensics. In particular, the primary challenge for the filtering forgery detection problem is that typically the techniques effective for nonlinear filtering (e.g. median filtering) detection are quite ineffective for linear filtering detection, and vice versa. In this paper, we have used Discrete Cosine Transform Residual features to train a Support Vector Machine classifier, and have demonstrated its effectiveness for both linear and non-linear filtering (specifically, Median Filtering) detection and filter classification, as well as re-compression based splicing detection in JPEG images. We have also theoretically justified the choice of the abovementioned feature set for both type of forgeries. Our technique outperforms the state-of-the-art forensic techniques for filtering detection, filter classification and re-compression based splicing detection, when applied on a set of standard benchmark images.
基于离散余弦变换残差特征的JPEG图像滤波伪造拼接检测
数字图像是现代信息交换的主要媒介之一。然而,由于图像编辑软件工具的广泛可用性,数字图像容易受到拦截和操纵。滤波伪造检测和拼接检测是数字图像取证中的两个重要问题。特别是,滤波伪造检测问题的主要挑战是,通常对非线性滤波(例如中值滤波)检测有效的技术对线性滤波检测非常无效,反之亦然。在本文中,我们使用离散余弦变换残差特征来训练支持向量机分类器,并证明了其对线性和非线性滤波(特别是中值滤波)检测和滤波器分类的有效性,以及JPEG图像中基于重新压缩的拼接检测。我们还从理论上证明了为两种类型的伪造选择上述特性集是合理的。当应用于一组标准基准图像时,我们的技术优于最先进的滤波检测、滤波器分类和基于重新压缩的拼接检测的法医技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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