Forensics of image blurring and sharpening history based on NSCT domain

Yahui Liu, Yao Zhao, R. Ni
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引用次数: 1

Abstract

Detection of multi-manipulated image has always been a more realistic direction for digital image forensic technologies, which extremely attracts interests of researchers. However, mutual affects of manipulations make it difficult to identify the process using existing single-manipulated detection methods. In this paper, a novel algorithm for detecting image manipulation history of blurring and sharpening is proposed based on non-subsampled contourlet transform (NSCT) domain. Two main sets of features are extracted from the NSCT domain: extremum feature and local directional similarity vector. Extremum feature includes multiple maximums and minimums of NSCT coefficients through every scale. Under the influence of blurring or sharpening manipulation, the extremum feature tends to gain ideal discrimination. Directional similarity feature represents the correlation of a pixel and its neighbors, which can also be altered by blurring or sharpening. For one pixel, the directional vector is composed of the coefficients from every directional subband at a certain scale. Local directional similarity vector is obtained through similarity calculation between the directional vector of one random selected pixel and the directional vectors of its 8-neighborhood pixels. With the proposed features, we are able to detect two particular operations and determine the processing order at the same time. Experiment results manifest that the proposed algorithm is effective and accurate.
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基于NSCT域的图像模糊和锐化历史取证
多操纵图像的检测一直是数字图像取证技术发展的一个较为现实的方向,引起了研究者的极大兴趣。然而,操作的相互影响使得使用现有的单操作检测方法难以识别过程。本文提出了一种基于非下采样contourlet变换(NSCT)域的图像模糊和锐化操作历史检测算法。从NSCT域中提取两组主要特征:极值特征和局部方向相似向量。极值特征包括NSCT系数在每个尺度上的多个最大值和最小值。在模糊或锐化操作的影响下,极值特征往往能获得理想的识别效果。方向相似性特征表示像素与其相邻点的相关性,这种相关性也可以通过模糊或锐化来改变。对于一个像素,方向矢量是由每个方向子带在一定尺度上的系数组成的。通过对随机选取的一个像素点的方向向量与其8个邻域像素点的方向向量进行相似度计算,得到局部方向相似向量。利用所提出的特征,我们能够检测两个特定的操作并同时确定处理顺序。实验结果表明了该算法的有效性和准确性。
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