首页> 外文会议>2015 IEEE China Summit amp; International Conference on Signal and Information Processing >Countering median filtering anti-forensics and performance evaluation of forensics against intentional attacks
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Countering median filtering anti-forensics and performance evaluation of forensics against intentional attacks

机译:对抗中值过滤反取证和针对故意攻击的取证性能评估

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Median filtering forensics and its anti-forensic attack have received considerable attention since median filtering can be used for both image enhancement and anti-forensic purposes. A median filtering anti-forensic attack method by adding uniformly distributed noise was proposed in an image pixel domain. However, we observe that this attack method leaves visible traces in the histogram of its median filtering residual (MFR) and can be detected using a histogram bin ratio of its MFR in the textured area. In order to eliminate this trace left in the MFR, we propose to adding noise adaptively in pixel domain to keep a constant minimal SNR. The performance of several forensic methods are evaluated under several attacks, it shows that the AR (autoregressive) forensic method has the most robustness against intentional attacks compared with the other forensic methods.
机译:由于中值滤波可用于图像增强和反法医学目的,因此中值滤波法医学及其反法医学攻击受到了相当大的关注。提出了一种在图像像素域中添加均匀分布噪声的中值滤波法医攻击方法。但是,我们观察到这种攻击方法在其中值滤波残留(MFR)的直方图中留下了可见的痕迹,并且可以使用其MFR在纹理区域中的直方图bin比率进行检测。为了消除在MFR中留下的痕迹,我们建议在像素域中自适应添加噪声,以保持恒定的最小SNR。在几种攻击下评估了几种取证方法的性能,表明与其他取证方法相比,AR(自回归)取证方法对故意攻击具有最强的鲁棒性。

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