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Image steganalysis using a bee colony based feature selection algorithm

机译:基于蜂群特征选择算法的图像隐写分析

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摘要

Feature selection is one of the most significant phases of pre-analysis processing, which can influence the performance of steganalysis. In this paper, we have proposed a new feature-based blind steganalysis method for detecting stego images from the cover images in JPEG images using a feature selection technique based on artificial bee colony (IFAB). Most usual techniques for feature selection are wrapper methods and filter methods which IFAB is one of the wrapper based feature selection methods. Artificial bee colony (ABC) algorithm is inspired by honey bees' social behavior in their search for perfect food sources. However, in the suggested algorithm, classifier performance and the dimension of the selected feature vector are dependent on heuristic information for ABC. As a result, we can choose the adaptive feature subset with respect to the shortest feature dimension and the improved performance of the classifier. The experimental results show that the proposed approach is easy to be employed for steganalysis purposes. Moreover, since IFAB is used as one of wrapper methods, as a result, its overall performance is better than several recent and well-known feature selection methods.
机译:特征选择是预分析处理中最重要的阶段之一,它会影响隐写分析的性能。在本文中,我们提出了一种新的基于特征的盲隐写分析方法,该方法使用基于人工蜂群(IFAB)的特征选择技术从JPEG图像的封面图像中检测隐匿图像。用于特征选择的最常用技术是包装器方法和过滤器方法,而IFAB是基于包装器的特征选择方法之一。人工蜂群(ABC)算法的灵感来自蜜蜂寻找完美食物来源的社会行为。但是,在建议的算法中,分类器性能和所选特征向量的维数取决于ABC的启发式信息。结果,我们可以针对最短特征维和分类器的改进性能来选择自适应特征子集。实验结果表明,该方法易于用于隐写分析。此外,由于IFAB被用作包装方法之一,因此,其整体性能优于几种最近的和众所周知的特征选择方法。

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