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Classification of leukocyte images using K-Means Clustering based on geometry features

机译:使用K-Means聚类基于几何特征对白细胞图像进行分类

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Information about counts and percentages of each type of leukocytes in blood is much needed to diagnose patients' illness. To gain that information, some functional enhancements had been applied to the optical microscopes so that they could produce digital images. Output images from these engineered microscopes were then extracted to get feature values from each image. These feature values then became input sets to the method of K-Means Clustering so that the leukocyte images could be classified according to each own cluster. Generally, the leukocyte classification process is conducted through four phases, which are image pre-processing, leukocyte segmentation, feature extraction, and leukocyte classification. Leukocyte types which were classified in this research were neutrophil, lymphocyte, monocyte, and eosinophil. Experiments were conducted using five kinds of features, which are normalized area, circularity, eccentricity, normalized parameter, and solidity, and by varying their types and their significant influences. The purpose of these trials were to determine which feature types would result in the highest value of accuracy and the effects of adding these respective features to the resulted accuracy. Based on the conducted classification results, it was found that the highest accuracy value was reached by circularity feature, which was 67%, meanwhile the lowest accuracy value was produced by the eccentricity feature, which was 43%. In this research, it was concluded that the accuracy value is ultimately determined by selecting the correct feature type rather than adding more features.
机译:诊断患者的疾病非常需要有关血液中每种白细胞的数量和百分比的信息。为了获得该信息,已对光学显微镜进行了一些功能增强,以便它们可以产生数字图像。然后提取这些工程显微镜的输出图像,以从每个图像中获取特征值。这些特征值随后成为K均值聚类方法的输入集,以便可以根据每个聚类对白细胞图像进行分类。通常,白细胞分类过程通过四个阶段进行,即图像预处理,白细胞分割,特征提取和白细胞分类。在这项研究中分类的白细胞类型是嗜中性粒细胞,淋巴细胞,单核细胞和嗜酸性粒细胞。实验使用归一化面积,圆度,偏心率,归一化参数和坚固性五种特征,并通过改变它们的类型及其重大影响来进行。这些试验的目的是确定哪种特征类型将导致最高的准确度值,以及将这些各个特征添加到所产生的准确度中的影响。根据进行的分类结果,发现圆度特征达到了最高精度值,为67%,而偏心度特征达到了最低精度值,为43%。在这项研究中,得出的结论是,精度值最终是通过选择正确的特征类型而不是添加更多特征来确定的。

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