首页> 外文会议>9th International Conference on Signal Processing(第九届国际信号处理学术会议)(ICSP'08)论文集 >Segmentation of Nucleus and Cytoplasm of White Blood Cells Using Gram-Schmidt Orthogonalization and Deformable Models
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Segmentation of Nucleus and Cytoplasm of White Blood Cells Using Gram-Schmidt Orthogonalization and Deformable Models

机译:克-施密特正交化和可变形模型对白细胞核和细胞质的分割

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Automatic recognition of white blood cells in hematological can be divided into four major parts: preprocessing,image segmentation,feature extraction and classification.Due to the multifarious nature of these cells and uncertainty in the hematological images,segmentation of white blood cells is one of the most important stages in this process.A scrupulous segmentation obviously reduces errors of next stages.In this paper,we introduce a novel method based on Gram-Schmidt process and parametric deformable models for segmenting the nucleus and cytoplasm.Also,we propose a new preprocessing method for improving the results of cytoplasm segmentation.Moreover,for finding the initial contour for parametric deformable model,an automatic scheme is defined.Experimental results show that our proposed method is capable of segmenting the white blood cells in the hematological images.To evaluate the proposed algorithm quantitatively,we compare its results with the manual segmentations by a hematologist.This study shows robustness of the proposed method.Another feature of the proposed method is that it is simple to implement.
机译:血液学中白细胞的自动识别可以分为四个主要部分:预处理,图像分割,特征提取和分类。由于这些细胞的多样性和血液学图像的不确定性,白细胞的分割是其中之一。严格的分割明显减少了下一阶段的错误。本文介绍了一种基于Gram-Schmidt过程和参数可变形模型的新方法,用于对细胞核和细胞质进行分割。此外,我们提出了一种新的预处理方法此外,为找到参数可变形模型的初始轮廓,定义了一种自动方案。实验结果表明,我们提出的方法能够对血液图像中的白细胞进行分割。定量地提出了算法,我们将其结果与通过血细胞分裂的手动分割进行了比较本研究表明了该方法的鲁棒性。该方法的另一个特点是易于实现。

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