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An Effective Ensemble-based Classification Algorithm for High-Dimensional Steganalysis

机译:基于有效的高维层分类分类算法

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Recently, ensemble learning algorithms are proposed to address the challenges of high dimensional classification for steganalysis caused by the curse of dimensionality and obtain superior performance. In this paper, we extend the state-of-the-art steganalysis tool developed by Kodovsky and Fridrich: the Kodovsky’s ensemble classifier and propose a novel method, called CSRS for high-dimensional steganalysis. Different from the Kodovsky’s ensemble classifier which selects features in a completely random way, the proposed CS-RS modifies the generation method of feature subspaces. Firstly, our method employs the chi-square statistic (CS) to measure the weight of each feature in the original feature space and sorts features according to weights. Then the sorted original feature space is partitioned into two parts according to a given dividing point: high correlation part and low correlation part. Finally, the feature subset is formed by selecting features randomly in each part according to the given sampling rate. Experiments with the steganographic algorithms HUGO demonstrate that the proposed CS-RS using the FLD classifier offers training complexity comparable to the Kodovsky’s classifier and significantly increases the performance of the Kodovsky’s classifier in less than 1000-dimensional feature subspaces, gaining 1.2% on the optimal result. In addition, the proposed algorithm outperforms Bagging and AdaBoost and can offer accuracy comparable to L-SVM.
机译:最近,提出了集合学习算法,以解决由维度诅咒引起的吊尸分析的高维分类的挑战,并获得优越的性能。在本文中,我们扩展了由Kodovsky和Fridrich开发的最先进的隐草工具:Kodovsky的集合分类器,并提出一种新的方法,称为CSR,用于高维隐点。不同于Kodovsky的合奏分类器,它以完全随机方式选择功能,所提出的CS-RS修改了特征子空间的生成方法。首先,我们的方法采用Chi-Square统计(CS)来测量原始特征空间中的每个特征的权重,并根据权重排序特征。然后根据给定的分割点(高相关部分和低相关部分)将排序的原始特征空间划分为两部分。最后,通过根据给定的采样率在每个部分中随机选择特征来形成特征子集。带有隐写算法的实验表明,使用FLD分类器的提议的CS-RS提供了与Kodovsky的分类器相当的培训复杂性,并且显着提高了Kodovsky的分类器在少于1000维的特征子空间中的性能,在最佳结果上获得1.2% 。此外,所提出的算法优于装袋和Adaboost,可以提供与L-SVM相当的精度。

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