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Splicing Localization in Tampered Blurred Images

机译:篡改模糊图像中的拼接本地化

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摘要

Digital images are the fastest means of transferring information in the present era, but with the ubiquitousness of advanced photo-editing tools, image forgery has become easier and more frequent. A common class of image forgery techniques is called “splicing”, in which, the forger crops a region of the first image and places it in the second image. Doing so, the difference in the blur type of different regions can leave a trace for tracking the forgery, that is, the blur type of different regions are going to be inconsistent if the source and spliced images are different in their class of blurriness. An approach to detect splicing in images is to evaluate the inconsistency of statistical features which results when splicing occurs. Considering the importance of splicing detection, various methods have been proposed. Nevertheless, the lack of public benchmark dataset for fairly evaluating the splicing detection methods is a major problem. Consequently, we were motivated to prepare a dataset for exploiting the inconsistency of blur types with the purpose of localizing splicing in forged images. We called the first version of our dataset SBU-TIDED1 (SBU Tampered Image Detection Evaluation Dataset). Furthermore, we have explored the features used in blur type detection. A new set of features is proposed which leads to accuracy enhancement. It is apparent form the experimental results that the proposed features are efficient for detecting and classifying two blur types, namely, out-of-focus and motion blur.
机译:数字图像是当今时代传输信息的最快方法,但是由于先进的照片编辑工具无处不在,图像伪造变得更加容易和频繁。一类常见的图像伪造技术称为“拼接”,其中,伪造者裁剪第一幅图像的一部分并将其放置在第二幅图像中。这样做,不同区域的模糊类型的差异可能会留下跟踪伪造的痕迹,也就是说,如果源图像和拼接图像的模糊度级别不同,则不同区域的模糊类型将不一致。一种检测图像中的拼接的方法是评估发生拼接时导致的统计特征不一致。考虑到剪接检测的重要性,已经提出了各种方法。然而,缺乏公平评估接合检测方法的公共基准数据集是一个主要问题。因此,我们有动力准备一个数据集,以利用模糊类型的不一致性,以定位在伪造图像中的拼接。我们将数据集的第一个版本称为SBU-TIDED1(SBU篡改图像检测评估数据集)。此外,我们探索了模糊类型检测中使​​用的功能。提出了一组新功能,这些功能可提高准确性。从实验结果可以明显看出,所提出的特征对于检测和分类两种模糊类型即散焦和运动模糊是有效的。

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