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首页> 外文期刊>International journal of electronic security and digital forensics >A novel median filtering forensics based on principal component analysis network
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A novel median filtering forensics based on principal component analysis network

机译:一种基于主成分分析网络的新型中值过滤法

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摘要

As an important issue of forensic analysis, median filtering detection has drawn much attention in the decade. While several median filtering forensic methods have been proposed, they may face trouble when detecting median filtering on low-resolution or compressed images. In addition, the existing median filtering forensic methods mainly depend on the manually selected features, which makes these methods may not adapt to varieties of data. To solve these problems, convolution neural networks have been applied to learn features from the training database automatically. But the CNN-based method trains slowly and the parameters of it is hard to select. Thus, we proposed a PCANet-based method. And we test our trained model on several databases. The simulation shows that our proposed method achieves better performance, and trains much faster than CNN-based method.
机译:作为法医分析的重要问题,中位过滤检测在十年中受到了很多关注。虽然提出了几种中值过滤法医方法,但在低分辨率或压缩图像上检测中值过滤时,它们可能会面临麻烦。此外,现有中值过滤法医方法主要取决于手动所选功能,这使得这些方法可能不适应数据品种。为了解决这些问题,已自动应用卷积神经网络从培训数据库中学习功能。但基于CNN的方法缓慢列车,并且难以选择的参数。因此,我们提出了一种基于PCanet的方法。我们在几个数据库上测试我们训练的模型。该模拟表明,我们的提出方法实现了更好的性能,并比基于CNN的方法更快地列举。

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