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Hierarchical classification architectures applied to Magnetic Resonance Images

机译:应用于磁共振图像的分层分类架构

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The main goal of the paper is to explore hierarchical classification. The investigation is performed on the dataset of Magnetic Resonance Images (MRI) which is hierarchically organized. Generalized top-down hierarchical classification architecture is proposed in the paper. Additionally, two specific cases of the generalized architecture are explored: three-stage hierarchical architecture based on SVM and three-stage hierarchical architecture based on ANN. From the performed experiments, it is concluded that the SVM based scheme outperforms the ANN based scheme. Moreover, the gain of the investigation conducted in this paper becomes bigger with the possibilities given by the proposed generalized architecture for further investigations.
机译:本文的主要目标是探索层次分类。研究是对磁共振图像(MRI)的数据集进行分层组织的。本文提出了一种广义的自上而下的层次分类体系结构。此外,还探讨了通用体系结构的两种特定情况:基于SVM的三级分层体系结构和基于ANN的三级分层体系结构。从执行的实验可以得出结论,基于SVM的方案优于基于ANN的方案。此外,本文中进行的研究的收益随着拟议的通用体系结构所提供的进一步研究的可能性而变得更大。

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