彩色子宫颈涂片图像的核增强与分割

T. Guan, Dongxiang Zhou, Weihong Fan, Keju Peng, Chao Xu, Xuanping Cai
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引用次数: 5

摘要

细胞图像分割是医学图像处理领域的研究热点之一。经典的细胞图像分割算法大多是直接对原始图像进行分割,导致对比度较低的细胞核丢失。为了解决这一问题,本文提出了一种新的核分割方法。在分析细胞核特征的基础上,首先根据细胞核在图像中的独特特征对其进行增强。所提出的核增强方法将图像的强度和颜色信息相结合,可以有效地增强对比度相对较低的核。然后,利用形态学重构提取增强图像的区域最大值,最后利用多个形状描述参数从提取的区域中筛选出真实细胞核。在实际子宫颈涂片图像上进行了实验,实验结果验证了该方法对子宫颈涂片图像核分割的有效性。
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Nuclei enhancement and segmentation in color cervical smear images
Cell image segmentation is one of the hot topics in medical image processing. Most of the classical cell image segmentation algorithms perform the segmentation directly on the original image and result in the loss of the cell nuclei with low intensity contrast. To solve this problem, this paper presents a novel nuclei segmentation method. Based on analyzing the characteristics of the cell nuclei, we first enhance the nuclei according to their unique features in the image. The proposed nuclei enhancement method combines the intensity and the color information of the image, and is thus effective to enhance the nuclei with relatively low intensity contrast. Then, the morphological reconstruction is employed to extract the regional maxima of the enhanced image, and several shape description parameters are finally used to screen out the true cell nuclei from the extracted regions. Experiments have been performed on real cervical smear images, and the results validate the effectiveness of the proposed method for nuclei segmentation in cervical smear images.
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