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Detection Potential of Multi-Features Representation of E-Nose Data in Classification of Moldy Maize Samples

机译:发霉玉米样品分类中电子鼻数据的多特征表示的多特征表示的潜力

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摘要

In order to assess rapidly and timely the moldy degree of maize samples using electronic nose (E-nose) and improve the correct classification rate of E-nose, the different feature representation modes (DFRM) for E-nose data were explored in depth. A determining method for multi-features vector of E-nose based on Wilks I > statistic was introduced so as to obtain the best multi-features vector for characterizing E-nose data. And then a selection method of representation features of each sensor signals based on elimination transform with pivoting of the I > statistic was also introduced for the different excitation characteristic of each gas sensor. The research results show that the classification effect of multi-features representation mode (MFRM) is better than that of single feature representation mode (SFRM), and the MFRM is not a regular pattern, but the best multi-features vector of E-nose in MFRM can be obtained by the determining method. Moreover, it is necessary to select the representation features of each sensor signals in the MFRM using the selection method. The visual inspection results based on SFRM and MFRM were examined by Fisher discriminant analysis (FDA) and proved that the introduced methods were very effective, the highest correct discrimination rate based on SFRM is 80%, while the correct discrimination rate of the five features combination is 97%. As an outlook, we believe that the research findings may be universally applied for the classification of other food and agriculture products using E-nose.
机译:为了利用电子鼻(E-鼻子)快速和及时的玉米样品的发霉度,并提高电子鼻的正确分类率,深度探讨了电子鼻数据的不同特征表示模式(DFRM)。引入了基于Wilk I>统计的电子鼻的多特征向量的确定方法,以获得用于表征电子鼻数据的最佳多特征向量。然后,还引入了基于通过枢转的消除变换的每个传感器信号的表示特征的选择方法,用于每个气体传感器的不同激励特性。研究结果表明,多特征表示模式(MFRM)的分类效果优于单个特征表示模式(SFRM),而MFRM不是常规模式,而是电子鼻子的最佳多特征向量在MFRM中可以通过确定方法获得。此外,必须使用选择方法选择MFRM中每个传感器信号的表示特征。通过Fisher判别分析(FDA)检查了基于SFRM和MFRM的目视检查结果,并证明了引入的方法非常有效,基于SFRM的最高正确歧视率为80%,而五个特征的正确歧视率组合是97%。作为一个展望,我们认为研究结果可以普遍申请使用电子鼻子进行其他食物和农业产品的分类。

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