F + KS:一种新的隐写分析特征选择策略

Morteza Darvish Morshedi Hosseini, M. Mahdavi
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引用次数: 5

摘要

通用隐写分析的性能在很大程度上取决于从图像中提取的特征。最近,为了对相邻像素和JPEG系数之间的大量依赖关系进行建模,引入了一些高维特征集。虽然使用这些高维模型可以提高检测率,但由于它们的维度,在分类过程中会产生一些问题。此外,这种超大模型的提取非常耗时。使用特征选择策略可以选择最突出的特征,从而减少特征提取时间。特征选择的另一个优点是可以检测在隐写过程中应该保留的特征,以避免隐写的检测。本文提出了一种新的特征选择算法,该算法利用两个统计度量(即Kolmogorov-Smirnov检验中的KS和F-to-remove中的F)。对于特征的选择,所提出的方法不受益于分类器;因此,应将其视为一种过滤方法。该方法利用F-to-remove方法中的F统计量,对特征进行重新排序。然后,使用ks检验对特征进行相互比较,如果两个特征的分布相等,则丢弃其中一个特征。将所提出的方法与最近引入的用于此目的的滤波器类型方法进行比较,表明在选择特征的有效性方面性能有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
F plus KS: A new feature selection strategy for steganalysis
Performance of universal steganalysis highly depends on the features extracted from the images. Recently there have been some high-dimensional feature sets introduced in order to model a large number of dependencies between neighboring pixels and JPEG coefficients. Although using these high-dimensional models can increase detection rate, due to their dimensionality, they can induce some problems in the classification process. Furthermore, extraction of such excessively large models is time-consuming. Using a feature selection strategy can lead to selection of the most prominent features and as a result, it can decrease feature extraction time. Another advantage of feature selection can be detection of the features that should be preserved in the steganography process in order to avoid detection of steganography. In this paper, a new feature selection algorithm is suggested which utilizes two statistical measures (i.e., KS from Kolmogorov-Smirnov test and F from F-to-remove). For selecting features, the proposed method does not benefit from a classifier; therefore, it should be considered as a filter method. In the proposed method, according to F statistic which is available in F-to-remove method, a reordering is applied on the features. Afterward, the features are mutually compared using KS-test and if the distributions of the two features are equal, one of them is discarded. The comparison of the proposed method with a recently introduced filter-type method for this aim shows performance improvements in terms of the effectiveness of selected features.
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