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Image splicing forgery detection based on low-dimensional singular value decomposition of discrete cosine transform coefficients

机译:基于离散余弦变换系数的低维奇异值分解的图像拼接伪造探测

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摘要

Digital image forgery has significantly increased due to the rapid development of several tools of image manipulation. Based on the manipulation used to produce a tampered image, image forgery techniques can be characterized into three types: copy-move forgery, image splicing, and image retouching. Image splicing is achieved by adding regions from one image into another. This technique changes the content of the target image and causes variations in image features which are used to detect the forgery regions. In this study, an image splicing forgery detection method based on low-dimensional singular value decomposition of discrete cosine transform (DCT) coefficients has been presented. The suspicious input image is divided into multi-size blocks, and each block is transformed into 2D DCT. The DCT coefficients are calculated correspondingly to each block. The features from DCT are extracted using SVD algorithm. The roughness measure is calculated for the set of singular values obtained. Lastly, four types of statistical features-mean, variance, third-order moment skewness, and fourth-order moment kurtosis-are extracted from SVD features and are then arranged in a feature vector. Feature reduction has been applied by kernel principal component analysis. Finally, support vector machine is used to distinguish between the authenticated and spliced images. The proposed method was evaluated against three standard image datasets CASIA v1, DVMM v1, and DVMM v2. The proposed method shows an average detection accuracy of 97.15, 99.30, and 96.97 for DVMM v1, CASIA v1, and DVMM v2, respectively. These results outperform several current image splicing detection methods.
机译:由于几种图像操纵工具的快速发展,数字图像伪造的造成显着增加。基于用于生产篡改图像的操作,图像伪造技术可以特征成三种类型:复制移动伪造,图像拼接和图像刷新。通过将区域从一个图像添加到另一个图像来实现图像拼接。该技术改变了目标图像的内容,并导致用于检测伪造区域的图像特征的变化。在本研究中,已经介绍了基于离散余弦变换(DCT)系数的低维奇异值分解的图像剪接伪造检测方法。可疑输入图像被分成多尺寸块,并且每个块被转换为2D DCT。 DCT系数对应于每个块计算。使用SVD算法提取DCT的特征。计算获得的奇异值的粗糙度测量。最后,从SVD特征提取四种类型的统计特征 - 平均统计特征,方差,三阶力矩斜度和四阶时刻kurtosis--然后被布置在特征向量中。内核主成分分析已应用特征减少。最后,支持向量机用于区分认证和拼接图像。该提出的方法是针对三个标准图像数据集Casia V1,DVMM V1和DVMM V2评估的方法。所提出的方法分别显示了DVMM V1,Casia V1和DVMM V2的97.15,99.30和96.97的平均检测精度。这些结果优于几个当前图像拼接检测方法。

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