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Image scaling factor estimation based on normalized energy density and learning to rank

机译:基于归一化能量密度和学习排序的图像缩放因子估计

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Over the past years, research on digital image forensics has become a hot topic in multimedia security. Among various forensics technologies, image resampling detection has become a standard detection tool in image forensics. Furthermore, examining parameters of geometric transformations such as scaling factors or rotation angles is very useful for exploring an image's overall processing history. In this paper, we propose a novel image scaling factor estimation method based on normalized energy density and learning to rank, which can not only effectively eliminate the long-known ambiguity between upscaling and downscaling in the analysis of resampling but also accurately estimate the factors of weak scaling, i.e., the scaling factors near 1. Empirical experiments on extensive images with different scaling factors demonstrate the effectiveness of our proposed method.
机译:在过去的几年中,对数字图像取证的研究已经成为多媒体安全的热门话题。在各种取证技术中,图像重采样检测已成为图像取证的标准检测工具。此外,检查几何变换的参数(例如比例因子或旋转角度)对于探索图像的整体处理历史非常有用。在本文中,我们提出了一种基于归一化能量密度和学习排序的图像缩放因子估计方法,该方法不仅可以有效消除重采样分析中众所周知的放大和缩小之间的歧义,而且可以准确估计图像的缩放因子。弱缩放,即缩放因子接近1。对具有不同缩放因子的大量图像进行的经验实验证明了我们提出的方法的有效性。

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