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Selection of Rich Model Steganalysis Features Based on Decision Rough Set $lpha$ -Positive Region Reduction

机译:基于决策粗糙集 $ alpha $ -正区域约简的丰富模型隐写分析特征的选择

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摘要

Steganography detection based on Rich Model features is a hot research direction in steganalysis. However, rich model features usually result a large computation cost. To reduce the dimension of steganalysis features and improve the efficiency of steganalysis algorithm, differing from previous works that normally proposed new feature extraction algorithm, this paper proposes a general steganalysis feature selection method based on decision rough set alpha-positive region reduction. First, it is pointed out that decision rough set alpha-positive region reduction is suitable for steganalysis feature selection. Second, a quantization method of attribute separability is proposed to measure the separability of steganalysis feature components. Third, steganalysis feature components selection algorithm based on decision rough set alpha-positive region reduction is given; thus, stego images can be detected by the selected feature. The proposed method can significantly reduce the feature dimensions and maintain detection accuracy. Based on the BOSSbase-1.01 image database of 10 000 images, a series of feature selection experiments are carried on two kinds of typical rich model features (35263-D J+SRM feature and 17000-D GFR feature). The results show that even though these two kinds of features are reduced to approximately 8000-D, the detection performance of steganalysis algorithms based on the selected features are also maintained with that of original features, which will remarkably improve the efficiency of feature extraction and stego image detection.
机译:基于丰富模型特征的隐写术检测是隐写分析的研究热点。但是,丰富的模型特征通常会导致较大的计算成本。为了减少隐写分析特征的维数并提高隐写分析算法的效率,与通常提出的新特征提取算法的以往工作不同,本文提出了一种基于决策粗糙集α-正区域约简的隐写特征选择方法。首先,要指出的是,决策粗糙集α-正区域约简适用于隐写分析特征选择。其次,提出了一种属性可分离性的量化方法,用于度量隐写特征分量的可分离性。第三,给出了基于决策粗糙集α-正区域约简的隐写特征成分选择算法。因此,可以通过选择的功能来检测隐身图像。所提出的方法可以显着减小特征尺寸并保持检测精度。基于10000张图像的BOSSbase-1.01图像数据库,对两种典型的丰富模型特征(35263-D J + SRM特征和17000-D GFR特征)进行了一系列特征选择实验。结果表明,即使将这两种特征减少到大约8000-D,基于所选特征的隐写分析算法的检测性能也保持与原始特征的检测性能相同,这将显着提高特征提取和隐写的效率。图像检测。

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