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Two-stage Hybrid Classifier Ensembles for Subcellular Phenotype Images Classification

机译:用于亚细胞表型图像分类的两阶段混合分类器集合。

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An automatic, reliable and efficient prediction system for protein subcellular localization can be used for establishing knowledge of the spatial distribution of proteins within living cells and permits to screen systems for drug discovery or for early diagnosis of a disease. In this paper, we propose a two-stage multiple classifier system to improve classification reliability by introducing rejection option. The system is built as a cascade of two classifier ensembles. The first ensemble consists of set of binary SVMs which generalizes to learn a general classification rule and the second ensemble focus on the exceptions rejected by the rule. To enhance diversity for the classifier ensembles, multiple features are introduced, including the local binary patterns (LBP), Gabor filtering and Gray Level Coocurrence Matrix (GLCM). Using the public benchmark 20 HeLa cell images, a high classification accuracy 96% is obtained with rejection rate 21%. subcellular phenotype images classification;hybrid classifier;local binary patterns;Gabor filtering;Gray level coocurrence
机译:用于蛋白质亚细胞定位的自动,可靠和高效的预测系统可用于建立有关活细胞内蛋白质空间分布的知识,并允许筛选用于药物发现或疾病早期诊断的系统。在本文中,我们提出了一种两阶段的多分类器系统,通过引入拒绝选项来提高分类的可靠性。该系统构建为两个分类器集合的级联。第一个集合由二进制SVM集合组成,该集合可概括为学习通用分类规则,而第二个集合则集中于该规则拒绝的异常。为了增强分类器集成的多样性,引入了多种功能,包括局部二进制模式(LBP),Gabor滤波和灰度共生矩阵(GLCM)。使用公开的基准20张HeLa细胞图像,可以达到96%的高分类精度,而拒绝率为21%。亚细胞表型图像分类;混合分类器;局部二值模式; Gabor滤波;灰度共生

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