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Segmentation of Overlapping Cervical Cells in Microscopic Images with Superpixel Partitioning and Cell-Wise Contour Refinement

机译:超像素分割和细胞明智轮廓细化技术在显微图像中重叠宫颈细胞的分割

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Segmentation of cervical cells in microscopic images is an important task for computer-aided diagnosis of cervical cancer. However, their segmentation is challenging due to inhomogeneous cell cytoplasm and the overlap between the cells. In this paper, we propose an automatic segmentation method for multiple overlapping cervical cells in microscopic images using superpixel partitioning and cell-wise contour refinement. First, the cell masses are detected by superpixel generation and triangle thresholding. Then, nuclei of cells are extracted by local thresholding and outlier removal. Finally, cell cytoplasm is initially segmented by superpixel partitioning and refined by cell-wise contour refinement with graph cuts. In experiments, our method showed competitive performances in two public challenge data sets compared to the state-of-the-art methods.
机译:显微图像中宫颈细胞的分割是计算机辅助宫颈癌诊断的重要任务。然而,由于细胞质不均匀以及细胞之间的重叠,它们的分割是具有挑战性的。在本文中,我们提出了一种使用超像素分割和逐单元轮廓细化的显微图像中多个重叠宫颈细胞的自动分割方法。首先,通过超像素生成和三角形阈值检测细胞质量。然后,通过局部阈值化和离群值去除来提取细胞核。最后,细胞质首先通过超像素分配进行分割,并通过具有图割的细胞方向轮廓细化进行细化。在实验中,与最新方法相比,我们的方法在两个公共挑战数据集中显示出竞争性表现。

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