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Entropy Feature Based on 2D Gabor Wavelets for JPEG Steganalysis

机译:基于二维Gabor小波的熵特征进行JPEG隐写分析

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摘要

To improve the detection accuracy for adaptive JPEG steganography which constrains embedding changes to image texture regions difficult to model, a new steganalysis feature based on the Shannon entropy of 2-dimensional (2D) Gabor wavelets is proposed. For the proposed feature extraction method, the 2D Gabor wavelets which have certain optimal joint localization properties in spatial domain and in the spatial frequency are employed to capture the image texture characteristics, and then the Shannon entropy values of image filtering coefficients are used as steganalysis feature. First, the decompressed JPEG image is filtered by 2D Gabor wavelets with different scale and orientation parameters. Second, the entropy features are extracted from all the filtered images and then they are merged according to symmetry. Last, the ensemble classifier trained by entropy features is used as the final steganalyzer. The experimental results show that the proposed feature can achieve a competitive performance by comparing with the state-of-the-art steganalysis features for the latest adaptive JPEG steganography algorithms.
机译:为了提高自适应JPEG隐写术的检测精度,该方法将嵌入变化限制在难以建模的图像纹理区域,提出了一种基于二维(2D)Gabor小波Shannon熵的隐写特征。对于提出的特征提取方法,采用在空间域和空间频率上具有一定最佳联合定位特性的二维Gabor小波来捕获图像纹理特征,然后将图像滤波系数的香农熵值用作隐写分析特征。 。首先,通过具有不同比例和方向参数的二维Gabor小波对解压缩的JPEG图像进行滤波。其次,从所有滤波后的图像中提取熵特征,然后根据对称性将它们合并。最后,由熵特征训练的集成分类器用作最终隐写分析器。实验结果表明,与最新的自适应JPEG隐写算法的最新隐写分析功能相比,该提议的功能可以实现竞争优势。

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