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Nucleus segmentation of cervical cytology images based on multi-scale fuzzy clustering algorithm

机译:基于多尺度模糊聚类算法的宫颈细胞学图像的核细胞核分割

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In the screening of cervical cancer cells, accurate identification and segmentation of nucleus in cell images is a key part in the early diagnosis of cervical cancer. Overlapping, uneven staining, poor contrast, and other reasons present challenges to cervical nucleus segmentation. We propose a segmentation method for cervical nuclei based on a multi-scale fuzzy clustering algorithm, which segments cervical cell clump images at different scales. We adopt a novel interesting degree based on area prior to measure the interesting degree of the node. The application of these two methods not only solves the problem of selecting the categories number of the clustering algorithm but also greatly improves the nucleus recognition performance. The method is evaluated by the IBSI2014 and IBSI2015 public datasets. Experiments show that the proposed algorithm has greater advantages than the state-of-the-art cervical nucleus segmentation algorithms and accomplishes high accuracy nucleus segmentation results.
机译:在宫颈癌细胞的筛查中,细胞图像中细胞核的准确鉴定和分割是宫颈癌早期诊断的关键部分。重叠,不均匀的染色,对比度不均,以及其他原因对宫颈核细胞区分割存在挑战。基于多尺度模糊聚类算法的宫颈核提出了一种宫颈核的分割方法,该宫颈细胞分段在不同尺度处分离。在测量节点的有趣程度之前,我们采用了基于面积的新颖有趣程度。这两种方法的应用不仅解决了选择聚类算法的类别数量的问题,而且大大提高了核识别性能。该方法由IBSI2014和IBSI2015公共数据集进行评估。实验表明,该算法的优点比最先进的宫颈细胞核分割算法更大,实现了高精度的核细胞核分段结果。

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