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Data Reconstruction Using Subspace Analysis for Gas Classification

机译:使用子空间分析进行气体分类的数据重构

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摘要

We propose a data reconstruction method using subspace analysis for gas classification in an electronic nose system. A noise generated by defects in sensors or by environmental factors in the process of data sampling significantly degrades data classification performance. In this paper, an electronic nose system more robust to data errors is designed by reconstructing lost or damaged values of data samples based on a statistical learning method that exploits the principal components. Diverse types of volatile organic compounds were employed in the classification experiments, which were conducted to reconstruct the lost or damaged data through the proposed method. The applied method prevented the degradation of classification performance and enhanced the discriminative power in the PCA+LDA feature space.
机译:我们提出了一种使用子空间分析的数据重构方法,用于电子鼻系统中的气体分类。在数据采样过程中,传感器缺陷或环境因素所产生的噪声会大大降低数据分类性能。在本文中,通过基于利用主要成分的统计学习方法重建数据样本的丢失或损坏值,设计了一种对数据错误更鲁棒的电子鼻系统。分类实验中使用了多种类型的挥发性有机化合物,通过所提出的方法来重建丢失或损坏的数据。应用的方法防止了分类性能的下降,并增强了PCA + LDA特征空间中的判别能力。

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