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Exposing Digital Image Forgeries by Illumination Color Classification

机译:通过照明颜色分类曝光数字图像伪造品

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摘要

For decades, photographs have been used to document space-time events and they have often served as evidence in courts. Although photographers are able to create composites of analog pictures, this process is very time consuming and requires expert knowledge. Today, however, powerful digital image editing software makes image modifications straightforward. This undermines our trust in photographs and, in particular, questions pictures as evidence for real-world events. In this paper, we analyze one of the most common forms of photographic manipulation, known as image composition or splicing. We propose a forgery detection method that exploits subtle inconsistencies in the color of the illumination of images. Our approach is machine-learning-based and requires minimal user interaction. The technique is applicable to images containing two or more people and requires no expert interaction for the tampering decision. To achieve this, we incorporate information from physics- and statistical-based illuminant estimators on image regions of similar material. From these illuminant estimates, we extract texture- and edge-based features which are then provided to a machine-learning approach for automatic decision-making. The classification performance using an SVM meta-fusion classifier is promising. It yields detection rates of 86% on a new benchmark dataset consisting of 200 images, and 83% on 50 images that were collected from the Internet.
机译:几十年来,照片一直被用来记录时空事件,并且通常在法庭上用作证据。尽管摄影师能够创建模拟图片的合成物,但是此过程非常耗时,并且需要专业知识。但是,如今,功能强大的数字图像编辑软件使图像修改变得简单明了。这破坏了我们对照片的信任,尤其是质疑照片作为现实事件的证据。在本文中,我们分析了摄影操纵的一种最常见形式,即图像合成或拼接。我们提出了一种伪造检测方法,该方法利用了图像照明颜色中的细微不一致。我们的方法是基于机器学习的,并且需要最少的用户交互。该技术适用于包含两个或更多人的图像,不需要专家干预即可做出篡改决定。为了实现这一目标,我们将基于物理和统计的光源估计量的信息纳入相似材料的图像区域。从这些光源估计值中,我们提取基于纹理和边缘的特征,然后将这些特征提供给机器学习方法以进行自动决策。使用SVM meta-fusion分类器的分类性能很有希望。在包含200张图像的新基准数据集上,它的检测率为86%,从Internet收集的50张图像上的检测率为83%。

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