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Semi-supervised Super-pixels classification for White Blood Cells segmentation

机译:白细胞分割的半监督超像素分类

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In this paper, we focused on annotating images at the super-pixel level using a semi-automatic segmentation approach. This process requires more important expert interaction. White Blood Cells segmentation is one of the most challenging topics in cytological image processing. In this work, we have proposed a semi-automatic process for White Blood Cells segmentation. The segmentation process is based on super-pixel classification using the semi-supervised co-Forest classifier. The first step of our process is about super-pixels generation by SLIC algorithm. In the second step, we apply the features extraction for each super-pixels, the features are extracted from color information (RGB) and Color Mean (CM). In the last step, we realize a semi-supervised classification to classify each super-pixel into nucleus and cytoplasm region. The super-pixel classification results gives a good segmentation of nucleus and cytoplasm of different nature and structure.
机译:在本文中,我们专注于使用半自动分段方法在超像素电平处注释图像。此过程需要更重要的专家互动。白细胞分割是细胞学图像处理中最具挑战性的主题之一。在这项工作中,我们提出了一种用于白细胞分割的半自动过程。分割过程基于使用半监控的共林分类器的超像素分类。我们进程的第一步是SLIC算法的超像素。在第二步中,我们应用针对每个超像素的特征提取,从颜色信息(RGB)和颜色平均值(cm)中提取特征。在最后一步中,我们意识到半监督分类,以将每个超像素分类为细胞核和细胞质区域。超像素分类结果给出了不同性质和结构的细胞核和细胞质的良好分割。

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