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Serial fusion of random subspace ensemble for subcellular phenotype images classification.

机译:随机子空间集合的序列融合,用于亚细胞表型图像分类。

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摘要

Subcellular localisation is a key functional characteristic of proteins. In this paper, we apply Haralick texture analysis and Curvelet Transform for feature description and propose a cascade Random Subspace (RS) ensemble with rejection options for subcellular phenotype classification. Serial fusions of RS classifier ensembles much improve classification reliability. The rejection option is implemented by relating the consensus degree from majority voting to a confidence measure and abstaining to classify ambiguous samples if the consensus degree is lower than a threshold. Using the public 2D HeLa cell images, classification accuracy 93% is obtained with rejection rate 2.7% from the proposed system.
机译:亚细胞定位是蛋白质的关键功能特征。在本文中,我们将Haralick纹理分析和Curvelet变换用于特征描述,并提出具有拒绝选项的级联随机子空间(RS)集成,用于亚细胞表型分类。 RS分类器的系列融合可大大提高分类的可靠性。通过将多数表决的共识度与置信度相关联,并在共识度低于阈值的情况下放弃对歧义样本进行分类,从而实现拒绝选项。使用公开的二维HeLa细胞图像,从提出的系统中获得93%的分类准确率和2.7%的拒绝率。

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