利用多维组合技术提高电子鼻分类精度

Hong Chen, R. Goubran, T. Mussivand
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引用次数: 13

摘要

传统的模式识别(PARC)方法,用于电子鼻(电子鼻)要么参数(如k近邻,KNN,线性判别分析,LDA)或非参数(如人工神经网络和模糊逻辑)。提出了多维组合(Multi-dimensional combination, MDC)方法,将单个分类器的分类输出组合成一个更加鲁棒和准确的分类输出。提出了两种寻找单个分类器的实现方法,一种是基于各种特征提取方法,另一种是基于各种降维方法,三种方法相结合。使用Cyranose 320电子鼻装置对六种家用香水进行了取样。获得的数据(600测量)分为两组,训练和测试。实验在不同浓度的样品气味、不同样本数量和不同训练数量下进行。结果表明,在所有条件下,MDC优于单个分类器,也优于其他传统的PARC方法。
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Improving the classification accuracy in electronic noses using multi-dimensional combining (MDC)
Traditional pattern recognition (PARC) methods, used in electronic noses (e-noses) are either parametric (such as k-nearest neighbors, KNN, and linear discriminant analysis, LDA) or non-parametric (such as artificial neural network and fuzzy logic). Multi-dimensional combining (MDC) is proposed to combine the classification outputs of individual classifiers into a more robust and accurate one. Two implementations are proposed to find the individual classifiers, one is based on various feature extraction methods and the other is based on various dimension reduction methods, with three means of combining. Six household fragrances were sampled using the Cyranose 320 e-nose device. The acquired data (600 measurements) was split into two sets, training and testing. Experiments were conducted at various concentrations of the sample smell, various sample numbers and various training numbers. Results show the advantage of MDC over the individual classifiers, and over the other traditional PARC methods under all conditions.
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