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Multiple Feature Extraction from Cervical Cytology Images by Gaussian Mixture Model

机译:基于高斯混合模型的宫颈细胞学图像多特征提取

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In this paper, methods for automated extraction of multiple features of cytoplasm and nuclei from cervical cytology images are described. Edges of the image are enhanced by Edge Sharpening filter. Then Gaussian mixture model using Expectation Maximization and K-means clustering is used to segment the image into its components as background, nucleus and cytoplasm. Features have been identified for both multiple and single cervical cytology cells. For multiple cell images, nucleus to cytoplasm ratio is calculated. A mixture of features like center, perimeter, area, mean intensity of nucleus and cytoplasm are extracted from cells with single nucleus. These features may be used to determine the stage of cancer.
机译:在本文中,描述了从宫颈细胞学图像中自动提取细胞质和细胞核的多个特征的方法。通过边缘锐化滤镜增强图像的边缘。然后使用期望最大化和K-均值聚类的高斯混合模型将图像分割成其组成部分,包括背景,细胞核和细胞质。已经为多个和单个宫颈细胞学细胞鉴定了特征。对于多个细胞图像,计算细胞核与细胞质的比率。从具有单个核的细胞中提取诸如中心,周长,面积,细胞核平均强度和细胞质等特征的混合物。这些特征可以用于确定癌症的阶段。

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