Feature Engineering in Discrimination of Herbal Medicines from Different Geographical Origins with Electronic Nose

Xianghao Zhan, Xiaoqing Guan, Rumeng Wu, Zhan Wang, You Wang, Guang Li
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引用次数: 14

Abstract

As pharmacists attach great significance to geographical origins of herbal medicines, cheap, nondestructive and convenient methods for discriminating herbal medicines originated from diverse regions are much in need. This work proposes a method of using electronic nose to discriminate herbal medicines from different origins. With 5 categories of herbal medicines and 3 to 4 geographical origins for each category, 8 pattern recognition algorithms prove the feasibility of the classification task and SVM, LDA and BP neural network have shown better classification accuracy. Additionally, feature engineering approaches are used to facilitate classification, showing that normalization based on each feature and each sensor and centralization prove to be better normalization approaches for classifiers; a proper degree of noise addition help classifiers get better generalization ability; finally, feature selection with SNR could lead to more efficient classifiers by selecting the most meaningful features and disregarding unnecessary features. This work provides insights for future herbal medicine evaluation based on electronic nose with better combinations of pattern recognition algorithms and feature engineering approaches for optimal classification performances.
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特征工程在电子鼻鉴别不同产地草药中的应用
由于药师对药材产地的重视,因此急需一种廉价、无损、便捷的方法来鉴别不同产地的药材。本研究提出了一种利用电子鼻鉴别不同产地草药的方法。采用5类药材,每类药材有3 ~ 4个产地,8种模式识别算法证明了分类任务的可行性,SVM、LDA和BP神经网络显示出较好的分类准确率。此外,使用特征工程方法促进分类,表明基于每个特征和每个传感器的归一化和集中化被证明是分类器更好的归一化方法;适当的噪声加入有助于分类器获得更好的泛化能力;最后,具有信噪比的特征选择可以通过选择最有意义的特征而忽略不必要的特征来产生更有效的分类器。这项工作为未来基于电子鼻的草药评估提供了见解,更好地结合模式识别算法和特征工程方法来实现最佳分类性能。
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