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GENERATIVE EMBEDDINGS BASED ON RICIAN MIXTURES Application to Kernel-based Discriminative Classification of Magnetic Resonance Images

机译:基于RICian混合物的生成嵌入式应用于基于核心的磁共振图像的核心分类

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Most approaches to classifier learning for structured objects (such as images or sequences) are based on probabilistic generative models. On the other hand, state-of-the-art classifiers for vectorial data are learned discriminatively. In recent years, these two dual paradigms have been combined via the use of generative embeddings (of which the Fisher kernel is arguably the best known example); these embeddings are mappings from the object space into a fixed dimensional score space, induced by a generative model learned from data, on which a (maybe kernel-based) discriminative approach can then be used. This paper proposes a new semi-parametric approach to build generative embeddings for classification of magnetic resonance images (MRI). Based on the fact that MRI data is well described by Rice distributions, we propose to use Rician mixtures as the underlying generative model, based on which several different generative embeddings are built. These embeddings yield vectorial representations on which kernel-based support vector machines (SVM) can be trained for classification. Concerning the choice of kernel, we adopt the recently proposed nonextensive information theoretic kernels. The methodology proposed was tested on a challenging classification task, which consists in classifying MRI images as belonging to schizophrenic or non-schizophrenic human subjects. The classification is based on a set of regions of interest (ROIs) in each image, with the classifiers corresponding to each ROI being combined via boosting. The experimental results show that the proposed methodology outperforms the previous state-of-the-art methods on the same dataset.
机译:大多数对分类器学习用于结构化对象的方法(例如图像或序列)都基于概率的生成模型。另一方面,判别学习矢量数据的最先进的分类器。近年来,这两种双重范式通过使用生成嵌入(其中Fisher内核可以说是最知名的例子);这些嵌入物从物体空间映射到固定尺寸分数空间,由从数据学习的生成模型引起的,然后可以在其上使用(即基于内核的)鉴别的方法。本文提出了一种新的半参数方法来构建用于磁共振图像(MRI)分类的生成嵌入。基于MRI数据通过大米分布良好描述的事实,我们建议使用瑞典混合物作为基础生成模型,基于其中构建了几种不同的生成嵌入式。这些嵌入物产生可以培训基于内核的支持向量机(SVM)以进行分类的矢量表示。关于内核的选择,我们采用最近提出的非夸张信息理论内核。提出的方法是在一个具有挑战性的分类任务上进行测试,该任务包括将MRI图像分类为属于精神分裂症或非精神分裂症人类受试者。分类基于每个图像中的一组感兴趣区域(ROI),与通过升压组合的每个ROI对应的分类器。实验结果表明,所提出的方法优于同一数据集的先前最先进的方法。

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