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A Robust Seam Carving Forgery Detection Approach by Three-Element Joint Density of Difference Matrix

机译:一种强大的横缝雕刻伪矩密度差分矩阵

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Seam carving is a popular content-aware image retargeting technique. However, it can also be used for malicious purposes such as object removal. In this paper, a robust blind forensics approach is proposed for seam-carved forgery detection. Since insignificant pixels along seams are removed for image resizing, the spatial neighborhood relations among pixels will be significantly changed, especially in smooth regions. Thus, joint density is exploited to model the change of spatially adjacent pixels' distribution caused by seam carving, even in the case of low scaling ratios. Specifically, three-element joint density of difference matrix is computed to form general forensics features (GTJD). The GTJD features are combined with existing energy and noise features exacted in LBP domain for classification. Experimental results show that the proposed approach achieves better accuracies for both uncompressed images and JPEG images with different scaling ratios.
机译:Seam Carving是一种流行的内容感知图像重试技术。但是,它也可以用于恶意目的,例如对象去除。本文提出了一种稳健的盲法探测方法,用于接缝雕刻伪造检测。由于沿着接缝的微不足道的像素被移除用于图像调整大小,因此像素之间的空间邻域关系将显着改变,尤其是在平滑区域中。因此,利用关节密度来模拟由接缝雕刻引起的空间相邻像素分布的变化,即使在低缩放比率的情况下也是如此。具体地,计算差异矩阵的三元素关节密度以形成一般取证特征(GTJD)。 GTJD功能与LBP域中的现有能量和噪声功能相结合,以进行分类。实验结果表明,该方法实现了具有不同缩放比率的未压缩图像和JPEG图像的更好的准确性。

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