利用特征融合检测图像篡改

Pin Zhang, Xiangwei Kong
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引用次数: 31

摘要

随着先进的图像处理软件的发展,伪造数字图像变得越来越容易,但检测数字图像却越来越困难。对于我们来说,辨别篡改照片和真实照片已经是个问题了。本文提出了一种基于特征融合的数字图像篡改检测方法。首先,我们从相机拍摄的图像中提取可以表示相机属性的特征统计量。这些特征统计数据用于训练一个单类分类器,以获得给定相机的特征模式。然后,对测试图像进行滑动分割。最后,将从图像块中提取的特征统计量输入到训练好的单类分类器中,以匹配给定相机的特征模式。将匹配块百分比较低的图像归类为篡改图像。对于经过JPEG压缩、重采样、修图等后期处理的篡改图像,我们的方法可以达到较高的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Image Tampering Using Feature Fusion
Along with the development of sophisticated image processing software, it is getting easier forging a digital image but harder to detect it. It is already a problem for us to distinguish tampered photos from authentic ones. In this paper, we propose an approach based on feature fusion to detect digital image tampering. First, we extract the feature statistics that can represent the property of a camera from the images taken by that camera. These feature statistics are used for training a one-class classifier in order to get the feature pattern of the given camera. Then, we do sliding segmentation to testing images. Finally, feature statistics extracted from image blocks are fed into the trained one-class classifier to match the feature pattern of the given camera. The images with low percentage of matched blocks are classified as tampered ones. Our method could achieve a high accuracy in detecting the tampered images that undergone post-processing such as JPEG compression, re-sampling and retouching.
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