The purpose of image steganalysis is to determine whether the carrier image contains hidden information or not. Since JEPG is the most commonly used image format over social networks, steganalysis in JPEG images is also the most urgently needed to be explored. However, in order to detect whether secret information is hidden within JEPG images, the majority of existing algorithms are designed in conjunction with the popular computer vision related networks, without considering the key characteristics appeared in image steganalysis. It is crucial that the steganographic signal, as an extremely weak signal, can be enhanced during its representation learning process. Motivated by this insight, in this paper, we introduce a novel representation learning algorithm for JPEG steganalysis that is mainly consisting of a graph attention learning module and a feature enhancement module. The graph attention learning module is designed to avoid global feature loss caused by the local feature learning of convolutional neural network and reliance on depth stacking to extend the perceptual domain. The feature enhancement module is applied to prevent the stacking of convolutional layers from weakening the steganographic information. In addition, pretraining as a way to initialize the network weights with a large-scale dataset is utilized to enhance the ability of the network to extract discriminative features. We advocate pretraining with ALASKA2 for the model trained with BOSSBase+BOWS2. The experimental results indicate that the proposed algorithm outperforms previous arts in terms of detection accuracy, which has verified the superiority and applicability of the proposed work.
翻译:由于JEPG是社交网络中最常用的图像格式,因此,对JPEG图像的系统分析也是最迫切需要探索的。然而,为了检测JEPG图像中是否隐藏了秘密信息,大多数现有的算法是结合流行的计算机视觉相关网络设计的,而没有考虑到图像系统分析中出现的关键特征。至关重要的是,在演示过程中,可以加强Stegraphic信号,因为它是一个极弱的信号。根据这一洞察力,我们为JPEGSEG图像的系统分析引入了一种新颖的描述性学习算法,主要包括一个图形关注学习模块和一个增强功能模块。图形关注学习模块的设计是避免当地特征学习动态神经网络和依靠深度堆积来扩展感官域。拟议的特征增强模块是为了防止革命层层堆积削弱大缩缩图信息。此外,我们为JPEGEGSS的精确性分析算法引入了一种新型的测试能力,从而将先前的ASAVA系统前的系统测试能力提高到了ASGSBA系统前的测试能力,从而利用了ASBSB级的实验室前的测试性网络模型。