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Normalized Moment of Inertia-Based Detection Algorithm for Copy-Paste Image Tampering

机译:基于惯性矩的复制粘贴图像篡改检测算法

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摘要

Copy-paste tampering is one of the most common image content attacking methods. Considering the low accuracy and high feature dimension of the existing algorithms, a normalized moment of inertia method is proposed in this paper to overcome these defects. In the phase of feature extracting, the algorithm first transforms the tested image using wavelet, and then selects the similar subbands to build overlapped blocks, finally uses Perceived Hash Algorithm (PHA) to make binarization processing for the subblocks and carries out the normalize moment of inertia of the subblocks which satisfy the coarse matching conditions between adjacent two lines after performing dictionary sorting. In feature matching phase, the algorithm first counts the similar subblocks whose shift is above the distance threshold, and then obtains the main shift vectors with specific frequencies, finally performs feature matching according to the difference of the normalized moment of inertia in the neighborhood. Experiment results illustrate that the proposed algorithm with lower feature dimension can effciently improve the matching speed and accuracy. Furthermore, it has better robustness for some post-processing operations, such as compression, Gaussian Blur, adding Gaussian noise, etc.
机译:复制粘贴篡改是最常见的图像内容攻击方法之一。针对现有算法精度低,特征量大的问题,提出一种归一化惯性矩方法以克服这些缺陷。在特征提取阶段,该算法首先使用小波对测试图像进​​行变换,然后选择相似的子带来构建重叠块,最后使用感知哈希算法(PHA)对子块进行二值化处理,并进行归一化。在执行字典排序之后,满足相邻两行之间的粗略匹配条件的子块的惯性。在特征匹配阶段,该算法首先对偏移量大于距离阈值的相似子块进行计数,然后获得具有特定频率的主偏移矢量,最后根据邻域归一化惯性矩的差异进行特征匹配。实验结果表明,该算法具有较低的特征维数,可以有效提高匹配速度和精度。此外,它对于某些后处理操作(如压缩,高斯模糊,添加高斯噪声等)具有更好的鲁棒性。

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