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IAS-CNN Image adaptive steganalysis via convolutional neural network combined with selection channel

机译:IAS-CNN图像自适应麻木分析通过卷积神经网络与选择通道相结合

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Steganography is conducive to communication security, but the abuse of steganography brings many potential dangers. And then, steganalysis plays an important role in preventing the abuse of steganography. Nowadays, steganalysis based on deep learning generally has a large number of parameters, and its pertinence to adaptive steganography algorithms is weak. In this article, we propose a lightweight convolutional neural network named IAS-CNN which targets to image adaptive steganalysis. To solve the limitation of manually designing residual extraction filters, we adopt the method of self-learning filter in the network. That is, a high-pass filter in spatial rich model is applied to initialize the weights of the first layer and then these weights are updated through the backpropagation of the network. In addition, the knowledge of selection channel is incorporated into IAS-CNN to enhance residuals in regions that have a high probability for steganography by inputting embedding probability maps into IAS-CNN. Also, IAS-CNN is designed as a lightweight network to reduce the consumption of resources and improve the speed of processing. Experimental results show that IAS-CNN performs well in steganalysis. IAS-CNN not only has similar performance with YedroudjNet in S-UNIWARD steganalysis but also has fewer parameters and convolutional computations.
机译:隐写术有利于沟通安全,但滥用隐写术带来了许多潜在的危险。然后,塞巴巴分析在防止滥用书术室发挥着重要作用。如今,基于深度学习的麻木分析通常具有大量参数,其对自适应隐写算法的这种情况薄弱。在本文中,我们提出了一个名为IAS-CNN的轻量级卷积神经网络,其针对图像自适应麻木分析。为解决手动设计残余提取过滤器的限制,我们采用网络中自学习过滤器的方法。也就是说,应用了空间丰富模型中的高通滤波器来初始化第一层的权重,然后通过网络的反向化更新这些权重。另外,选择信道的知识被纳入IAS-CNN,以增强通过将嵌入概率图输入到IAS-CNN中具有高概率的区域中的残留物。此外,IAS-CNN设计为轻量级网络,以降低资源的消耗并提高加工速度。实验结果表明,IAS-CNN在塞巴巴分析中表现良好。 IAS-CNN不仅具有与S-UNIRAD STEGALY分析中的YedRoudjNet类似的性能,也具有更少的参数和卷积计算。

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