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HEp-Net: a smaller and better deep-learning network for HEp-2 cell classification

机译:HEP-Net:用于HEP-2细胞分类的较小和更好的深度学习网络

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摘要

Indirect immunofluorescence of Human Epithelial-2 (HEp-2) cells is a commonly used method for the diagnosis of autoimmune diseases. Traditional approach relies on specialists to observe HEp-2 slides via the fluorescence microscope, which suffers from a number of shortcomings like being subjective and labour intensive. In this paper, we proposed a deep-learning network, namely HEp-Net, to automatically classify HEp-2 cell images. The proposed HEp-Net uses multi-scale convolutional component to extract features from Hep-2 cell images and fuses the features extracted by shallow and deep layers for performance improvement. The proposed model is evaluated on publicly available I3A (Indirect Immunofluorescence Image Analysis) and MIVIA data-sets. Experimental result demonstrates that, compared to the state-of-the-art approaches, our proposed HEp-Net yields better performance with smaller network size.
机译:人上皮-2(HEP-2)细胞的间接免疫荧光是一种常用的自身免疫疾病的方法。传统方法依赖于通过荧光显微镜观察HEP-2幻灯片的专家,这遭受了许多缺点,如主观和劳动密集型。在本文中,我们提出了深度学习网络,即HEP-Net,自动分类HEP-2单元格图像。该提议的HEP-Net使用多尺度卷积成分来提取HEP-2细胞图像的特征,并融合由浅层和深层提取的特征以进行性能改进。在公开的I3A(间接免疫荧光图像分析)和Mivia数据集上评估所提出的模型。实验结果表明,与最先进的方法相比,我们提出的HEP-Net具有更好的网络尺寸。

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