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Glandular cavity segmentation based on local correntropy-based K-means (LCK) clustering and morphological operations

机译:基于局部基于熵的K均值(LCK)聚类和形态学运算的腺腔分割

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One of the ways to diagnose cancer is to obtain images of the cells under the microscope through biopsies. Because the images of the stained cells are very complicated, there is a great deal of interference with the doctor's observations. To address this issue, we propose a new method for segmenting glandular cavity from gastric cancer cell images. Our method combines local correntropy-based K-means (LCK) clustering method and morphological operations to divide the image into complete glandular cavity and remove all extra-cavity interference areas. Our method does not require human interaction. The acquired image boundary features and internal information are complete, allowing doctors to diagnose cancer more quickly and efficiently.
机译:诊断癌症的方法之一是通过活检在显微镜下获取细胞图像。由于染色细胞的图像非常复杂,因此对医生的观察结果有很大的干扰。为了解决这个问题,我们提出了一种从胃癌细胞图像分割腺腔的新方法。我们的方法结合了基于局部熵的K均值(LCK)聚类方法和形态学运算,将图像分为完整的腺腔并去除了所有腔外干涉区域。我们的方法不需要人工干预。所获取的图像边界特征和内部信息是完整的,使医生可以更快,更有效地诊断癌症。

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