KNN、SVM和ELM分类检测镰状细胞性贫血的比较分析

Tajkia Saima Chy, Mohammad Anisur Rahaman
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引用次数: 23

摘要

红细胞异常包括为身体所有组织提供氧气的红细胞。有时红细胞的形成和作用受到阻碍。镰状细胞性贫血(SCA)是一种红细胞疾病。镰状细胞性贫血患者日益增多。镰状细胞性贫血缩短预期寿命。但是通过早期诊断可以延长预期寿命。为了识别镰状细胞的存在,开发了一种图像处理程序。血液样本以图像格式采集。在图像预处理中,对图像进行灰度转换、噪声滤波和增强。模糊C意味着聚类应用于确定正常和镰状细胞。形态学操作也适用于图像。利用几何特征和统计特征进行提取。最后,实现k近邻(knn)、支持向量机(svm)和极限学习机(elm)分类器对图像进行测试。通过该系统对具有可靠结果的分类器进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparative Analysis by KNN, SVM & ELM Classification to Detect Sickle Cell Anemia
Red blood cell abnormalities involve erythrocytes that supply oxygen to all body tissues. Sometimes the formation and role of erythrocytes are hindered. Sickle cell anemia (SCA) is one kind of red blood cell disease. People carrying sickle cell anemia are increasing day by day. Sickle cell anemia shortens life expectancy. But life expectancy can be extended by diagnosing it an early stage. To identify the existence of sickle cells, an image processing procedure is developed. Blood samples are collected in the form of image format. The conversion of gray image, noise filtering and enhancement of image is done in image pre-processing. Fuzzy C means clustering is applied to determine the normal and sickle cells. Morphological operations are also applied to images. The geometrical and statistical features are used for extraction. Lastly, k nearest neighbor (knn), support vector machine (svm) & extreme learning machine (elm) classifiers are implemented to test images. Comparisons among the classifiers with reliable results are presented by this system.
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