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Is Ensemble Classifier Needed for Steganalysis in High-Dimensional Feature Spaces?

机译:在高维特征空间中的麻渣分析需要合奏分类器吗?

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The ensemble classifier, based on Fisher Linear Discriminant base learners, was introduced specifically for steganalysis of digital media, which currently uses high-dimensional feature spaces. Presently it is probably the most used method to design supervised classifier for steganalysis of digital images because of its good detection accuracy and small computational cost. It has been assumed by the community that the classifier implements a non-linear boundary through pooling binary decision of individual classifiers within the ensemble. This paper challenges this assumption by showing that linear classifier obtained by various regularizations of the FLD can perform equally well as the ensemble. Moreover it demonstrates that using state of the art solvers linear classifiers can be trained more efficiently and offer certain potential advantages over the original ensemble leading to much lower computational complexity than the ensemble classifier. All claims are supported experimentally on a wide spectrum of stego schemes operating in both the spatial and JPEG domains with a multitude of rich steganalysis feature sets.
机译:基于Fisher线性判别基础学习者的合奏分类器是专门用于数字媒体的隐分,目前使用高维特征空间。目前,由于其良好的检测准确性和小的计算成本,所以它可能是设计监督分类器的监督分类器的方法。已经假设了分类器通过汇集集合中的各个分类器的二进制决定来实现非线性边界。本文通过表明通过FLD的各种规范化获得的线性分类器可以同样地执行该假设,挑战这一假设可以同样地执行。此外,它表明,使用现有的求解器的状态可以更有效地培训线性分类器,并提供优于较低的计算复杂性的原始集合的某些潜在的优势。在实验上支持所有索赔,用于在空间和JPEG结构域中运行的广泛的STEGO方案,具有众多富杀死分析特征集。

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