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Rough Sets and Local Texture Features for Diagnosis of Connective Tissue Disorders

机译:粗糙集和局部纹理特征,用于结缔组织疾病的诊断

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The standard method for diagnosis of connective tissue disorders is based on the automatic classification of antinuclear autoantibod-ies by analyzing indirect immunofluorescence images of human epithelial type 2 (HEp-2) cells. In this regard, the paper presents a new method to select relevant texture features for HEp-2 cell staining pattern recognition. The proposed method is developed by judiciously integrating the theory of rough sets and the merits of local texture descriptors. While hypercuboid equivalence partition matrix of rough sets helps to select important texture descriptors for HEp-2 cell classification, the maximum relevance-maximum significance criterion of feature selection facil-itates identification of significant and relevant features under important descriptors. Finally, support vector machine with different kernels as well as extreme learning machine are used to recognize one of the known staining patterns present in HEp-2 cell images. The effectiveness of the proposed method, along with a comparison with related approaches, is demonstrated on publicly available MIVIA HEp-2 cell image database.
机译:结缔组织疾病的诊断的标准方法是通过分析人上皮型2(HEP-2)的细胞的间接免疫荧光图像基于抗核autoantibod独立实体的自动分类。在这一点上,本文提出了一种新的方法来选择喉癌Hep-2细胞染色模式识别相关的纹理特征。该方法是通过审慎整合粗糙集理论和局部纹理描述符的优点开发的。虽然粗糙集hypercuboid等价划分矩阵来帮助选择重要的纹理描述为喉癌Hep-2细胞分类,在重要的描述符特征选择卸妆水,itates识别显著和相关特征的最大意义,最大意义标准。最后,支持向量机不同的内核以及极端学习机用于识别存在于的HEp-2细胞的图像的公知的染色模式之一。所提出的方法的有效性,与相关方法的比较一起被证明可公开获得的HEp MIVIA-2细胞图像数据库。

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