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Segmentation of Cervical Cell Images using Mean-shift Filtering and Morphological Operators

机译:均值漂移滤波和形态学算子对宫颈细胞图像的分割

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Screening plays an important role within the fight against cervical cancer. One of the most challenging parts in order to automate the screening process is the segmentation of nuclei in the cervical cell images, as the difficulty for performing this segmentation accurately varies widely within the nuclei. We present an algorithm to perform this task. After background determination in an overview image, and interactive identification of regions of interest (ROIs) at lower magnification levels, ROIs are extracted and processed at the full magnification level of 40x. Subsequent to initial background removal, the image regions are smoothed by mean-shift and median filtering. Then, segmentations are generated by an adaptive threshold. The connected components in the resulting segmentations are filtered with morphological operators by characteristics such as shape, size and roundness. The algorithm was tested on a set of 50 images and was found to outperform other methods.
机译:筛选在对抗宫颈癌的斗争中起重要作用。为了自动化筛选过程是最具挑战性的部分之一是宫颈细胞图像中核的分割,因为在细胞核内精确地在细胞上进行精确地变化的难度。我们提出了一种执行此任务的算法。在概述图像中的背景确定之后,并且在较低放大水平下的感兴趣区域(ROI)的交互式识别,在40倍的完全放大率水平下提取并加工ROI。在初始背景上移除之后,通过平均偏移和中值滤波进行平滑图像区域。然后,通过自适应阈值生成分割。由形状,尺寸和圆度等特征,用形态算子过滤所得分割中的连接部件。该算法在一组50个图像上进行了测试,发现了以其他方法优于其他方法。

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