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首页> 外文期刊>EURASIP journal on image and video processing >Automated approach for splicing detection using first digit probability distribution features
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Automated approach for splicing detection using first digit probability distribution features

机译:使用第一位数概率分布特征来拼接检测的自动化方法

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Abstract Digital image tampering operations destroy inbuilt fingerprints and create own new fingerprint in the tampered region. Considering the Internet speed and storage space, most of the images are circulated in the JPEG format. In a single compressed JPEG image, the first digits of DCT coefficients follow a logarithmic distribution. This distribution is not followed by DCT coefficients of DCT grid aligned double compressed images. In a tampered image, the major portion of the original JPEG image is aligned double JPEG compressed. Hence, untampered region does not follow this logarithmic distribution. Due to the nonalignment of DCT compression grids, tampered region still follows this logarithmic distribution. Many tampering localization techniques have investigated this fingerprint, but the majority of them uses SVM classifier, specifically trained for the respective primary and secondary compression qualities of the test images. The efficiency of these classifiers is dependent on the knowledge of tampered image compression history. Hence, these approaches are not fully automated. In this paper, we have investigated a method, which does not require prior compression quality knowledge. Our experimental analysis shows that the addition of Gaussian noise can make the probability distribution of an aligned double compressed image similar to a nonaligned double compressed image. We divided the test image and its Gaussian version into sub-images and clustered them using K-means clustering algorithm. The application of K-means clustering algorithm does not require compression quality knowledge. This makes our approach more practical as compared to the other first digit probability distribution-based algorithms. The proposed algorithm gives compatible performance with the other approaches, based on different JPEG fingerprints.
机译:摘要数字图像篡改操作会破坏内置指纹并在篡改区域创建自己的新指纹。考虑到互联网速度和存储空间,大多数图像都以JPEG格式循环。在单个压缩的JPEG图像中,DCT系数的第一位遵循对数分布。该分布不是DCT网格对齐双压缩图像的DCT系数。在篡改图像中,原始JPEG图像的主要部分是对齐的双JPEG压缩。因此,未尊重的区域不遵循此对数分布。由于DCT压缩网格的非公分,篡改区域仍然遵循该对数分布。许多篡改本地化技术已经研究了这种指纹,但大多数使用SVM分类器,专门针对测试图像的各个主压缩质量训练。这些分类器的效率取决于篡改图像压缩历史的知识。因此,这些方法没有完全自动化。在本文中,我们研究了一种方法,该方法不需要先前的压缩质量知识。我们的实验分析表明,加入高斯噪声可以使对准的双压缩图像的概率分布类似于非公共压缩图像。我们将测试图像及其高斯版本划分为子图像并使用K-Means群集算法群集它们。 K-Means聚类算法的应用不需要压缩质量知识。与其他基于第一位数概率分布的算法相比,这使我们的方法更加实用。基于不同的JPEG指纹,所提出的算法与其他方法提供兼容性。

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