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Hierarchical classification of HEP-2 cell images using class-specific features

机译:使用类特定功能对HEP-2细胞图像进行分层分类

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The paper proposes a class-specific feature assisted automatic classification approach of microscopic HEp-2 cell images. Unlike traditional methods our method highlights two important aspects: (1) the visual characteristics of classes to formulate class-specific image features and (2) the classification task is treated as hierarchical verification sub-tasks. Thus, the overall classification problem is modeled as a verification of each class, using its class-specific features. We have demonstrated that the proposed method yields a high classification rate utilizing simple and efficient features with only (20%) of the data for training. Additionally, we also experimentally analyze the crucial aspects, such as comparison with a traditional non-hierarchical framework and performance evaluation on low contrast images which is useful for early disease detection.
机译:本文提出了一种针对特定类别的特征辅助的微观HEp-2细胞图像自动分类方法。与传统方法不同,我们的方法突出了两个重要方面:(1)类的视觉特征以制定类特定的图像特征;(2)分类任务被视为层次验证子任务。因此,使用其特定于类别的特征,将整个分类问题建模为对每个类别的验证。我们已经证明,所提出的方法利用简单有效的特征(仅用于训练的数据的20%)产生了很高的分类率。此外,我们还通过实验分析了关键方面,例如与传统的非分层框架进行比较以及对低对比度图像进行性能评估,这对于早期疾病检测很有用。

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