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HEp-2 Cell Classification Using Descriptors Fused into the Dissimilarity Space

机译:使用融合到相异空间中的描述符进行HEp-2细胞分类

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Autoimmune diseases are strictly connected with the presence of autoantibodies in patient serum. Detection of Antinucleolar Antibodies (ANAs) in patient serum is performed using a laboratory technique named Indirect Immunofluorescence (IIF) followed by manual evaluation on the acquired slides from specialized personnel. In this procedure, several limitations appear and several automatic techniques have been proposed for the task of ANA detection. In this work we present a method achieving state-of-the-art performance on a publicly available dataset. More precisely, two powerful and rotation invariant descriptors are incorporated into a two stage classification scheme where the feature vectors are represented and fused in the dissimilarity space. Then, in a second level dissimilarity vectors are classified using a linear SVM classifier. Evaluation on the HEp-2 cell contest dataset yields a 70.16% performance on cell-level classification. Furthermore we provide results in Image Level Classification where a 78.57% classification rate was achieved.
机译:自身免疫性疾病与患者血清中自身抗体的存在密切相关。使用称为间接免疫荧光(IIF)的实验室技术对患者血清中的抗核仁抗体(ANAs)进行检测,然后对从专业人员那里获得的载玻片进行人工评估。在此过程中,出现了一些局限性,并且针对ANA检测的任务提出了几种自动技术。在这项工作中,我们提出了一种在公开可用数据集上实现最新性能的方法。更准确地说,将两个功能强大且旋转不变的描述符合并到两阶段分类方案中,在该方案中,特征向量在不相似空间中表示并融合。然后,在第二级中,使用线性SVM分类器对不相似矢量进行分类。对HEp-2细胞竞赛数据集的评估得出细胞水平分类的性能为70.16%。此外,我们提供的图像级别分类结果达到了78.57%的分类率。

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