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JPEG steganalysis with combined dense connected CNNs and SCA-GFR

机译:JPEG隐写分析,结合密集的CNN和SCA-GFR

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摘要

The detection of weakly hidden information in a JPEG compressed image is challenging. In this paper, we propose a 32-layer convolutional neural network (CNN) involving feature reuse by concatenating all features from previous layers. The proposed method can improve the flow of gradient, and the sharing of features and bottleneck layers can also dramatically reduce the number of parameters in the proposed CNN model. To further improve the detection accuracy and combine the directional features from the selection-channel-aware Gabor filtering residual (SCA-GFR) method with Gabor filtering and non-directional feature maps from the CNN model, an ensemble architecture called CNN-SCA-GFR is used, which combines the proposed CNN method with the conventional SCA-GFR method to detect J-UNIWARD and UERD. This can significantly reduce the detection error rate to below that of the existing JPEG steganalysis methods. For example, in the detection of J-UNIWARD at 0.1 bpnzAC, the detection error rate using our proposed method is 5.67% lower than that achieved by XuNet, and 7.89% lower than that achieved by the conventional SCA-GFR method. When detecting UERD at 0.1 bpnzAC, the detection error rate using our proposed method is 5.94% lower than that achieved by XuNet, and 10.28% lower than that achieved by the conventional SCA-GFR method.
机译:在JPEG压缩图像中检测弱隐藏信息具有挑战性。在本文中,我们提出了一个32层卷积神经网络(CNN),该算法通过将先前各层的所有特征进行级联来实现特征重用。所提出的方法可以改善梯度的流动,特征和瓶颈层的共享也可以大大减少所提出的CNN模型中的参数数量。为了进一步提高检测精度,并将选择通道感知的Gabor滤波残差(SCA-GFR)方法中的方向特征与Gabor滤波以及CNN模型中的非方向性特征图相结合,一种称为CNN-SCA-GFR的整体架构结合使用所提出的CNN方法和常规SCA-GFR方法来检测J-UNIWARD和UERD。这可以将检测错误率显着降低到低于现有JPEG隐写分析方法的错误率。例如,在0.1 bpnzAC的J-UNIWARD检测中,使用我们提出的方法的检测错误率比XuNet低5.67%,比传统的SCA-GFR方法低7.89%。当在0.1 bpnzAC处检测UERD时,使用我们提出的方法的检测错误率比XuNet低5.94%,比传统的SCA-GFR方法低10.28%。

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