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Optimizing Feature for JPEG Steganalysis via Gabor Filter and Co-occurrences Matrices

机译:通过Gabor滤波器和共出的矩阵优化JPEG麻木分析的功能

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For modern steganography algorithms, there are many distortion functions designed for JPEG images which are difficult to be detected for the steganalyst. Until now, the most successful detection of this kind steganography named GFR (Gabor Filter Residual) is currently achieved with detectors for training on cover and stego sets. These features extract the image texture information from different scales and orientations, and the image statistical characteristics can be captured more effectively. In this paper, we describe a novel feature set for steganalysis of JPEG images. The features are composed of two parts. All of them are obtained based on GFR in the spatial domain. Its first part is to extract the histograms features, and the other part is co-occurrence matrices features. Due to its high dimensionality, we make the best of the label to reduce these features. Compared with state-of-the-arts methods, the most advantage of this proposed steganalysis features is its lower detection error while meeting the advanced steganographic algorithms.
机译:对于现代隐写术算法,设计了许多用于JPEG图像的失真函数,对于落地剧中难以检测。到目前为止,目前通过探测器进行了名为GFR(Gabor滤波器残差)的这种定位书籍的最成功的检测,用于覆盖盖和SEGO套件。这些特征从不同的尺度和方向提取图像纹理信息,并且可以更有效地捕获图像统计特征。在本文中,我们描述了一个用于JPEG图像的隐分的新功能。这些功能由两部分组成。所有这些都基于空间域中的GFR获得。其第一部分是提取直方图特征,另一部分是共发生矩阵特征。由于其高维度,我们充分利用标签来减少这些功能。与最先进的方法相比,这一提出的麻木分析特征的最优点是其较低的检测误差,同时满足先进的隐写算法。

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