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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Fisher tensors for classifying human epithelial cells
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Fisher tensors for classifying human epithelial cells

机译:Fisher张量用于对人上皮细胞进行分类

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摘要

Analyzing and classifying Human Epithelial type 2 (HEp-2) cells using Indirect Immunofluorescence protocol has been the golden standard for detecting connective tissue diseases such as Rheumatoid Arthritis. However, this suffers from numerous shortcomings such as being subjective as well as time and labor intensive. Recently, several studies explore the advantages of artificial systems to automate the process, not only to reduce the test turn-around time but also to deliver more consistent results. In this paper, we extend the conventional bag of word models from Euclidean space to non-Euclidean Riemannian manifolds and utilize them to classify the HEp-2 cells. The main motivation comes from the observation that HEp-2 cells can be efficiently described by symmetric positive definite matrices which lie on a Riemannian manifold. With this motivation, we first discuss an intrinsic bag of Riemannian words model. We then propose Fisher tensors which can in turn encode additional information about the distribution of the signatures in a bag of word model. Experiments on two challenging HEp-2 images datasets, namely ICPRContest and SNPHEp-2 show that the proposed methods obtain notable improvements in discrimination accuracy, in comparison to baseline and several state-of- the-art methods. The proposed framework, while hand-crafted towards cell classification, is a generic framework for object recognition. This is supported by assessing the performance of our proposal on a challenging texture classification task.
机译:使用间接免疫荧光协议分析和分类人类上皮2型(HEp-2)细胞已成为检测结缔组织疾病(如类风湿关节炎)的黄金标准。但是,这具有许多缺点,例如主观性以及时间和劳动强度。最近,有几项研究探索了使用人工系统实现流程自动化的优势,不仅可以减少测试周转时间,而且可以提供更一致的结果。在本文中,我们将传统的单词模型包从欧几里得空间扩展到非欧几里得黎曼流形,并利用它们对HEp-2细胞进行分类。主要动机来自观察到,可以通过位于黎曼流形上的对称正定矩阵有效描述HEp-2细胞。出于这种动机,我们首先讨论了黎曼单词模型的内在包。然后,我们提出费舍尔张量,该张量可以依次编码关于一袋单词模型中签名分布的其他信息。在两个具有挑战性的HEp-2图像数据集(即ICPRContest和SNPHEp-2)上进行的实验表明,与基线方法和几种最新方法相比,所提出的方法在判别准确性上有显着提高。拟议的框架虽然是针对细胞分类而手工制作的,但却是用于对象识别的通用框架。这是通过评估我们的提案在具有挑战性的纹理分类任务中的表现来支持的。

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