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Accurate and robust localization of duplicated region in copy-move image forgery

机译:在复制移动图像伪造中准确且鲁棒地定位重复区域

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摘要

Copy-move image forgery detection has recently become a very active research topic in blind image forensics. In copy-move image forgery, a region from some image location is copied and pasted to a different location of the same image. Typically, post-processing is applied to better hide the forgery. Using keypoint-based features, such as SIFT features, for detecting copy-move image forgeries has produced promising results. The main idea is detecting duplicated regions in an image by exploiting the similarity between keypoint-based features in these regions. In this paper, we have adopted keypoint-based features for copy-move image forgery detection; however, our emphasis is on accurate and robust localization of duplicated regions. In this context, we are interested in estimating the transformation (e.g., affine) between the copied and pasted regions more accurately as well as extracting these regions as robustly by reducing the number of false positives and negatives. To address these issues, we propose using a more powerful set of keypoint-based features, called MIFT, which shares the properties of SIFT features but also are invariant to mirror reflection transformations. Moreover, we propose refining the affine transformation using an iterative scheme which improves the estimation of the affine transformation parameters by incrementally rinding additional keypoint matches. To reduce false positives and negatives when extracting the copied and pasted regions, we propose using "dense" MIFT features, instead of standard pixel correlation, along with hysteresis thresholding and morphological operations. The proposed approach has been evaluated and compared with competitive approaches through a comprehensive set of experiments using a large dataset of real images (i.e., CASIA v2.0). Our results indicate that our method can detect duplicated regions in copy-move image forgery with higher accuracy, especially when the size of the duplicated region is small.
机译:拷贝移动图像伪造检测近来已成为盲图像取证中非常活跃的研究主题。在复制移动图像伪造中,将某个图像位置的区域复制并粘贴到同一图像的其他位置。通常,应用后处理以更好地隐藏伪造品。使用基于关键点的功能(例如SIFT功能)来检测复制移动图像的伪造物已产生了可喜的结果。主要思想是通过利用这些区域中基于关键点的特征之间的相似性来检测图像中的重复区域。在本文中,我们采用了基于关键点的功能来进行复制移动图像伪造检测。但是,我们的重点是对重复区域进行准确而强大的定位。在这种情况下,我们感兴趣的是更准确地估计复制区域和粘贴区域之间的转换(例如仿射),以及通过减少假阳性和阴性的数目来稳健地提取这些区域。为了解决这些问题,我们建议使用一组功能更强大的基于关键点的功能,称为MIFT,该功能共享SIFT功能的属性,但对于镜面反射变换也是不变的。此外,我们建议使用迭代方案细化仿射变换,该方案通过逐步填充其他关键点匹配来改善仿射变换参数的估计。为了减少提取复制和粘贴区域时的假阳性和阴性,我们建议使用“密集” MIFT功能(而不是标准像素相关性)以及磁滞阈值和形态学运算。通过使用大量真实图像数据集(即CASIA v2.0)进行的全面实验,对提出的方法进行了评估并与竞争方法进行了比较。我们的结果表明,我们的方法可以以更高的精度检测复制移动图像伪造中的重复区域,尤其是当重复区域的大小较小时。

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