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Performance Issues in Shape Classification

机译:形状分类的性能问题

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Shape comparisons of two groups of objects often have two goals: to create a classifier to separate the groups and to provide information that shows differences between classes. We examine issues that are important for shape analysis in a study comparing schizophrenic patients to normal subjects. For this study, non-linear classifiers provide large accuracy gains over linear ones. Using volume information directly in the classifier provides gains over a classifier that normalizes the data for volume. We compare two different representations of shape: displacement fields and distance maps. We show that the classifier based on displacement fields outperforms the one based on distance maps. We also show that displacement fields provide more information in visualizing shape differences than distance maps.
机译:两组对象的形状比较通常有两个目标:创建分类器以分隔组,并提供显示类之间差异的信息。研究将精神分裂症患者与正常受试者进行研究中的研究中对形状分析很重要的问题。对于本研究,非线性分类器通过线性分类提供了大的精度。直接在分类器中使用卷信息提供常规规范卷数据的分类器的增益。我们比较两个不同的形状表示:位移场和距离图。我们表明基于位移字段的分类器优于基于距离图的概率。我们还表明,位移字段在可视化形状差异方面提供的更多信息而不是距离图。

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