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Image Steganalysis via Random Subspace Fisher Linear Discriminant Vector Functional Link Network and Feature Mapping

机译:通过随机子空间Fisher线性判别向量功能链接网络和特征映射的图像隐星分析

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摘要

As the number of methods for implementing steganography (the hiding of data within a cover) increases, steganalysis, which can detect the presence of such hidden data, is also accompanied by an increase. To improve the accuracy of detection, we propose a new algorithm for processing feature that makes two optimizations into a random vector functional link (RVFL) network. The first optimization locates the processing phase of RVFL, where we model the eigenspectrum by the eigenvalue distribution of the scatter matrix. This eigenspectrum is used to generate the transpose matrix and obtain final features after feature reduction. The second optimization is the use of the random subspace Fisher linear discriminant (FLD) instead of random weights in RVFL. The weights between the input and enhancement nodes more accurately represent the relative importance of the features. The experiments compare the performance of other classifiers with the proposed method using five high-dimensional features. It is shown that the proposed method outperforms other classifiers in these steganalysis methods.
机译:作为实现隐写术的方法数量(覆盖内的数据)的数量增加,可以检测这种隐藏数据的存在的麻痹也伴随着增加。为了提高检测的准确性,我们提出了一种新的处理功能算法,该算法将两种优化转换为随机向量功能链路(RVFL)网络。第一优化定位RVFL的处理阶段,在那里我们通过散射矩阵的特征值分布来模拟EIGensPectrum。该EIGensPectrum用于生成转置矩阵并在减少特征后获得最终特征。第二种优化是使用随机子空间Fisher线性判别(FLD)而不是RVFL中的随机重量。输入和增强节点之间的权重更准确地表示特征的相对重要性。该实验将其他分类器的性能与使用五个高维特征的提出方法进行比较。结果表明,所提出的方法优于这些隐分方法中的其他分类器。

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