Gui Based Performance Comparison of WBC Segmentation and Its Classification

B. G, Dr.Savier J.S
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引用次数: 0

Abstract

The earlier method for diagnosing or detecting some diseases was through Manual Examination of Blood Smear Image and had a lot of human errors and tedious work. Overcome these issues modern methods like segmentation with efficient data mining techniques and classify leukocytes (WBC) based on machine learning algorithms are implemented. With the aid of the image processing technique, automatically diagnoses the diseases using the features of WBCs. For accurate diagnosing of disease, correctly classified leukocytes, and its subclass are required. Geometrical, textural, and statistical features of different images are extracted and applied in classification algorithms. Hence, multi level-based classification developed using the different classifiers like LibSVM, Naive Bayes, J48, Zero R, PART and Random Forest classifiers are considered and select the best classifier which is used to efficiently classify each category. From the performance indices, the best technique can suit for the identification of disease like Leukaemia. The proposed work in this paper demonstrated using MATLAB in GUI Environment. Classification is developed using WEKA software. The segmentation of different testing and training images have done Using 5 fold Cross Validation techniques performance indices measured and classification accuracy was compared in this paper.
基于Gui的WBC分割与分类性能比较
早期诊断或检测某些疾病的方法是通过人工检查血液涂片图像,存在大量的人为错误和繁琐的工作。克服这些问题的现代方法,如分割与高效的数据挖掘技术和分类白细胞(WBC)基于机器学习算法的实现。借助于图像处理技术,利用白细胞的特征对疾病进行自动诊断。为了准确诊断疾病,需要对白细胞及其亚类进行正确分类。提取不同图像的几何、纹理和统计特征并应用于分类算法中。因此,考虑使用LibSVM、朴素贝叶斯、J48、Zero R、PART和随机森林分类器等不同分类器开发的多级分类,并选择最佳分类器对每个类别进行有效分类。从性能指标上看,最佳技术适合于白血病等疾病的鉴定。本文所提出的工作在GUI环境下用MATLAB进行了演示。使用WEKA软件进行分类。本文采用5重交叉验证技术对不同的测试和训练图像进行了分割,比较了测量的性能指标和分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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