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A Performance Analysis of GA-ELM Classifier in Classification of Abnormality Detection in Electrical Impednce Tomography (EIT) Lung Images

机译:GA-ELM分类器在电抗断层扫描(EIT)肺部图像异常检测分类中的性能分析

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This article presents the performance analysis of Genetic Algorithm (GA) - Extreme Learning Machine (ELM) classifier by comparing with Genetic Algorithm (GA)-Support Vector Machine (SVM) classifier for detecting the abnormalities from Electrical impedance tomography images. The machine learning algorithms, Extreme Learning Machine (ELM), and Support Vector Machine (SVM) are used for classification and a Genetic Algorithm (GA) is used as feature selector to reduce the high dimensional features needed for classification. The Gray Level Co-occurrence Matrix (GLCM) and intensity histogram are used for texture feature extraction from the EIT images. The EIT lung images are reconstructed using one step linearized Gauss-Newton (GN) algorithm. Detection of lung injury is one of the critical issue where excessive care has to be taken for better diagnosis and treatment. Any classifier needs to detect the non-ventilated regions with respect to efficiency and performance. The performance analysis of these two classifiers are analyzed based on the benchmark parameters such performance index, sensitivity, specificity, average detection and F-score. From the experimental results it is evident, that the Extreme Learning Machine has performed well compared with the Support Vector Machine and also Extreme Learning Machine classification performance has been increased for genetic algorithm based feature selection.
机译:通过与遗传算法(GA)-支持向量机(SVM)分类器进行比较,提出了遗传算法(GA)-极限学习机(ELM)分类器从电阻抗断层图像检测异常的性能分析。机器学习算法,极限学习机(ELM)和支持向量机(SVM)用于分类,而遗传算法(GA)作为特征选择器以减少分类所需的高维特征。灰度共生矩阵(GLCM)和强度直方图用于从EIT图像中提取纹理特征。使用一步线性线性高斯-牛顿(GN)算法重建EIT肺部图像。肺损伤的检测是关键问题之一,必须格外小心以更好地诊断和治疗。任何分类器都需要检测效率和性能方面的非通风区域。基于性能指标,灵敏度,特异性,平均检测和F评分等基准参数对这两个分类器的性能分析进行了分析。从实验结果可以明显看出,与支持向量机相比,极限学习机的性能良好,对于基于遗传算法的特征选择,极限学习机的分类性能也得到了提高。

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