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Steganalysis with CNN Using Multi-channels Filtered Residuals

机译:使用多通道过滤残留物的CNN分解

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In the current study of steganalysis, Convolutional Neural Network (CNN) have attracted many scholars' attention. Recently, some effective CNN architectures have been proposed with better results than traditional Rich Models with Ensemble Classifiers. Inspired by the idea that Rich Models use various types of sub-models to enlarge different characteristics between cover and stego features, a scheme based on multi-channels filtered residuals is proposed for digital image steganalysis in this paper. This paper mainly focus on the stage of image processing, 3 high-pass filtered image residuals are fed to a deep CNN architecture to make full use of the great nonlinear curve fitting capability. As known, deep learning is powerful in pattern recognition, most previous networks only use single type of filtered residuals in steganalysis, varied high-pass filtered residuals can offer stronger features for CNN in this paper. After filtering, the residuals are superposed into a multi-channels residual map before training, this measure can involve a joint optimization of CNN's parameters. But single residual map has no such effect. The experiment results prove that it's an efficient way to provide a better detection performance, achieving an accuracy of 82.02% on Cropped-BOSSBase-1.01 dataset.
机译:在目前对麻皮分析的研究中,卷积神经网络(CNN)吸引了许多学者的注意力。最近,已经提出了一些有效的CNN架构,其结果比具有集合分类器的传统丰富的型号更好。灵感灵感来自富型模型使用各种类型的子模型来放大覆盖和SEGO功能之间的不同特性,提出了一种基于多通道过滤残差的方案,用于本文的数字图像隐藏。本文主要集中在图像处理的阶段,3个高通滤波图像残留物被送入深层CNN架构,以充分利用巨大的非线性曲线拟合能力。如已知的,深度学习是强大的模式识别,最先前的网络仅在塞到分析中使用单一类型的过滤残留物,多种高通滤波残留物可以在本文中为CNN提供更强的功能。过滤后,将残留物叠加到多通道残留地图中,在训练之前,该措施可以涉及CNN参数的联合优化。但单个残差地图没有这样的效果。实验结果证明它是提供更好的检测性能的有效方法,在裁剪 - Bossbase-1.01数据集中实现了82.02%的准确性。

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