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An efficient abnormal cervical cell detection system based on multi-instance extreme learning machine

机译:基于多实例极限学习机的高效异常宫颈细胞检测系统

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Automatic detection of abnormal cells from cervical smear images is extremely demanded in annual diagnosis of women's cervical cancer. For this medical cell recognition problem, there are three different feature sections, namely cytology morphology, nuclear chromatin pathology and region intensity. The challenges of this problem come from feature combination s and classification accurately and efficiently. Thus, we propose an efficient abnormal cervical cell detection system based on multi-instance extreme learning machine (MI-ELM) to deal with above two questions in one unified framework. MI-ELM is one of the most promising supervised learning classifiers which can deal with several feature sections and realistic classification problems analytically. Experiment results over Herlev dataset demonstrate that the proposed method outperforms three traditional methods for two-class classification in terms of well accuracy and less time.
机译:在女性宫颈癌的年度诊断中,从宫颈涂抹图像自动检测来自宫颈涂片图像的异常细胞。对于该医疗细胞识别问题,有三个不同的特征部分,即细胞学形态,核染色质病理学和区域强度。此问题的挑战来自特色和高效的特征组合S和分类。因此,我们提出了一种基于多实例极限学习机(MI-ELM)的高效异常宫颈细胞检测系统,以处理一个统一框架中的两个问题。 Mi-Elm是最有前途的监督学习分类器之一,可以分析有几个特征部分和现实分类问题。在Herlev Dataset上的实验结果表明,所提出的方法在井准确度和更少的时间内为两类分类表现出三种传统方法。

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