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An Improved Convolutional Neural Network for Steganalysis in the Scenario of Reuse of the Stego-Key

机译:一种改进的卷积神经网络,用于重新利用STEGO关键的情况

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The topic of this paper is the use of deep learning techniques, more specifically convolutional neural networks, for steganalysis of digital images. The steganalysis scenario of the repeated use of the stego-key is considered. Firstly, a study of the influence of the depth and width of the convolution layers on the effectiveness of classification was conducted. Next, a study on the influence of depth and width of fully connected layers on the effectiveness of classification was conducted. Based on the conclusions from the studies, an improved convolutional neural network was created, which is characterized by the state-of-art level of classification efficiency but containing 20 times less parameters to learn during the training process. Smaller number of leamable parameters results in faster network learning, easier convergence, and smaller memory and computing power requirements. The paper contains description of the current state of art, description of the experimental environment, structures of the studied networks and the results of classification accuracy.
机译:本文的主题是利用深度学习技术,更具体地说卷积神经网络,用于数字图像的铲除。考虑了重复使用STEGO-键的隐星分析场景。首先,进行了对卷积层的深度和宽度对分类有效性的影响的研究。接下来,进行了对完全连接层的深度和宽度对分类有效性的影响的研究。根据研究的结论,创建了一种改进的卷积神经网络,其特点是最先进的分类效率水平,但在训练过程中含有20倍的参数学习。较少数量的可扩建参数导致更快的网络学习,更容易收敛和更小的内存和计算电源要求。本文包含对当前现有技术的描述,实验环境的描述,所研究的网络的结构以及分类精度的结果。

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