论文标题

构建特征变化系数,以评估空间域的卷积检测算法中卷积层的特征学习能力

Constructing feature variation coefficients to evaluate feature learning capabilities of convolutional layers in steganographic detection algorithms of spatial domain

论文作者

Zhang, Ru, Zou, Sheng, Liu, Jianyi, Lin, Bingjie, Liu, Dazhuang

论文摘要

传统的切解方法通常包括两个步骤:特征提取和分类。近年来已经出现了基于CNN(卷积神经网络)的多种坚定分析算法。其中,CNN模型的卷积层通常用于提取地理特征,并且完全连接的层用于分类。由于特征提取的有效性严重影响了分类的准确性,因此设计人员通常通过改善卷积层来提高隐肌检测的准确性。例如,卷积层中的常见优化方法包括卷积内核的改善,激活功能,汇总功能,网络结构等。但是,由于卷积层的复杂性和不可解释的性,很难定量分析和比较提取特征的有效性。因此,本文提出了评估卷积层特征学习能力的变化系数。我们在空间结构域中选择了四个典型的基于stemansys模型的CNN,例如YE-NET,YEDROUDJ-NET,ZHU-NET和SR-NET作为用例,并通过实验验证变异系数的有效性。此外,根据变异系数,使用特征修饰层用于优化CNN模型完全连接层之前的特征,并且实验结果表明,这四个算法的检测准确性以不同的方式提高了。

Traditional steganalysis methods generally include two steps: feature extraction and classification.A variety of steganalysis algorithms based on CNN (Convolutional Neural Network) have appeared in recent years. Among them, the convolutional layer of the CNN model is usually used to extract steganographic features, and the fully connected layer is used for classification. Because the effectiveness of feature extraction seriously influences the accuracy of classification, designers generally improve the accuracy of steganographic detection by improving the convolutional layer. For example, common optimizing methods in convolutional layer include the improvement of convolution kernel, activation functions, pooling functions, network structures, etc. However, due to the complexity and unexplainability of convolutional layers, it is difficult to quantitatively analyze and compare the effectiveness of feature extraction. Therefore, this paper proposes the variation coefficient to evaluate the feature learning ability of convolutional layers. We select four typical image steganalysis models based CNN in spatial domain, such as Ye-Net, Yedroudj-Net, Zhu-Net, and SR-Net as use cases, and verify the validity of the variation coefficient through experiments. Moreover, according to the variation coefficient , a features modification layer is used to optimize the features before the fully connected layer of the CNN model , and the experimental results show that the detection accuracy of the four algorithms were improved differently.

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