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Detect Information-Hiding Type and Length in JPEG Images by Using Neuro-Fuzzy Inference Systems

机译:通过使用神经模糊推理系统检测JPEG图像中的信息隐藏类型和长度

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In this paper, we present a scheme of steganalysis of JPEG images with the use of polynomial fitting and computational intelligence techniques. Based on the Generalized Gaussian Distribution (GGD) model in the quantized DCT coefficients, the errors between the logarithmic domain of the histogram of the DCT coefficients and the polynomial fitting are extracted as features to detect the adulterated JPEG images and the untouched ones. Computational intelligence techniques such as Support Vector Machines (SVM), neuro-fuzzy inference system, etc. are utilized. Results show that, the designed method is successful in detecting the information-hiding types and the information-hiding length in the multi-class JPEG images.
机译:在本文中,我们介绍了使用多项式拟合和计算智能技术的JPEG图像的隐分方案。基于量化DCT系数中的广义高斯分布(GGD)模型,DCT系数的直方图和多项式拟合的对数域之间的误差被提取为特征以检测掺码JPEG图像和未触及的特征。使用诸如支持向量机(SVM),神经模糊推理系统等的计算智能技术。结果表明,设计的方法成功地检测到多类JPEG图像中的信息隐藏类型和信息掩藏长度。

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