Machine Learning Based Image Forgery Detection Using Natural Scene Statistics

M. Rehman, I. Nizami, Ali Ahsan, K. Chong
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Abstract

A copy-move image forgery is the most common type of image tampering. It can be done by copying a part of an image and paste on another part of the same image. Therefore, it can be one of the challenging tasks to find that forgery. This paper suggested a different approach to detect the copy move image forgery by the natural scene statistic features. These features are extracted from both original and forged images of MICC-F2000 dataset. Natural scene statistics are the statistical properties of any natural image captured by any camera, so an attempt of forging an image makes these properties un-natural. By this method, an original and forged images can be easily classified by state-of-the-art machine learning models trained on these features. The performance of this method is quantitatively assessed using the famous evaluation metrics i-e accuracy, TPR, FPR, TNR, Recall and F1-score. A comparison with other state-of-the-art techniques has shown that the proposed technique has shown better results in comparison with the other techniques.
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基于自然场景统计的机器学习图像伪造检测
复制-移动图像伪造是最常见的图像篡改类型。它可以通过复制图像的一部分并粘贴到同一图像的另一部分来完成。因此,找到伪造品可能是一项具有挑战性的任务。本文提出了一种利用自然场景统计特征检测复制运动图像伪造的新方法。这些特征分别从MICC-F2000数据集的原始图像和伪造图像中提取。自然场景统计是任何相机捕获的任何自然图像的统计属性,因此试图伪造图像会使这些属性变得不自然。通过这种方法,可以通过对这些特征进行训练的最先进的机器学习模型轻松地对原始和伪造图像进行分类。采用准确率、TPR、FPR、TNR、Recall和F1-score等著名的评价指标对该方法的性能进行了定量评价。与其他先进技术的比较表明,与其他技术相比,所提出的技术显示出更好的结果。
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