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Image segmentation and classification of white blood cells with the extreme learning machine and the fast relevance vector machine

机译:用极限学习机和快速相关向量机对白细胞进行图像分割和分类

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Abstract White blood cells (WBCs) or leukocytes are an important part of the body's defense against infectious organisms and foreign substances. WBC segmentation is a challenging issue because of the morphological diversity of WBCs and the complex and uncertain background of blood smear images. The standard ELM classification techniques are used for WBC segmentation. The generalization performance of the ELM classifier has not achieved the maximum nearest accuracy of image segmentation. This paper gives a novel technique for WBC detection based on the fast relevance vector machine (Fast-RVM). Firstly, astonishingly sparse relevance vectors (RVs) are obtained while fitting the histogram by RVM. Next, the relevant required threshold value is directly sifted from these limited RVs. Finally, the entire connective WBC regions are segmented from the original image. The proposed method successfully works for WBC detection, and effectively reduces the effects brought about by illumination and staining. To achieve the maximum accuracy of the RVM classifier, we design a search for the best value of the parameters that tune its discriminant function, and upstream by looking for the best subset of features that feed the classifier. Therefore, this proposed RVM method effectively works for WBC detection, and effectively reduces the computational time and preserves the images.
机译:摘要白细胞(WBC)或白细胞是人体防御传染性生物和异物的重要组成部分。由于WBC的形态多样性以及血液涂片图像的背景复杂且不确定,因此WBC分割是一个具有挑战性的问题。标准ELM分类技术用于WBC分割。 ELM分类器的泛化性能尚未达到图像分割的最大最近精度。本文提出了一种基于快速相关向量机(Fast-RVM)的WBC检测新技术。首先,在通过RVM拟合直方图的同时,获得了令人惊讶的稀疏相关矢量(RVs)。接下来,直接从这些有限的RV中筛选相关的所需阈值。最后,从原始图像中分割出整个结缔性WBC区域。所提出的方法成功地用于白细胞检测,并有效降低了照明和染色带来的影响。为了实现RVM分类器的最大准确性,我们设计了一个搜索,以优化调整其判别函数的参数的最佳值,并在上游搜索可提供分类器的最佳功能子集。因此,该提出的RVM方法有效地用于白细胞检测,并有效地减少了计算时间并保留了图像。

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