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Mean-shift based segmentation of cell nuclei in cervical PAP-smear images

机译:基于均值漂移的宫颈PAP涂片图像中的细胞核分割

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Segmentation of cell nuclei in PAP-smear cervical images is of preeminent importance in computer-aided-diagnostic screening technique for cervical cancer. This paper proposes a novel nuclei segmentation approach which builds upon the mean-shift method. The mean-shift method is applied on the cell images which first undergo a decorrelation-stretch contrast enhancement. The results of mean-shift based approach is refined further using morphological operations. We have validated results of segmentation on dataset which includes 900 images with the given ground truth. We demonstrate that our simple and efficient approach yields high validation rate on a large image dataset. In addition, we also show encouraging visual results on another set of more complex real images.
机译:PAP涂片子宫颈图像中的细胞核分割在子宫颈癌的计算机辅助诊断筛查技术中具有极其重要的意义。本文提出了一种基于均值漂移方法的新型核分割方法。均值偏移方法应用于首先经过去相关拉伸对比度增强的细胞图像。基于均值漂移的方法的结果使用形态学运算进一步完善。我们已验证了包含900个具有给定地面真实性的图像的数据集的分割结果。我们证明了我们简单有效的方法可以在大型图像数据集上产生较高的验证率。此外,我们还在另一组更复杂的真实图像上显示出令人鼓舞的视觉效果。

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