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首页> 外文期刊>Journal of near infrared spectroscopy >Classification of pernambuco (Caesalpinia echinata Lam.) wood quality by near infrared spectroscopy and linear discriminant analysis
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Classification of pernambuco (Caesalpinia echinata Lam.) wood quality by near infrared spectroscopy and linear discriminant analysis

机译:近红外光谱和线性判别分析法对伯南布哥(Caesalpinia echinata Lam。)木材质量的分类

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摘要

Near infrared (NIR) spectroscopy, coupled with multivariate data analysis, is proposed as a rapid and effective analytical method for evaluating the quality of pernambuco (Caesalpina echinata Lam.) wood for making bows for stringed instruments. For this purpose, a set of 30 pernambuco sticks were ranked based on their suitability for making high-quality bows and they were assigned to one of the following categories: 0=very poor to poor, 1=good to very good and 2=excellent. Considering the low number of samples in the poor category, the classification study focused on the discrimination between samples of the two higher quality groups. Linear discriminant analysis (LDA) was applied to the NIR data as a classification technique and in order to ensure a more appropriate ratio between the number of objects (samples) and number of variables (absorbance at different wavenumbers), LDA was preceded by feature selection. Based on LDA, 100% of the samples were correctly classified and 92.6% of the samples were correctly predicted by the cross-validation procedure.
机译:近红外(NIR)光谱技术与多变量数据分析相结合,是一种快速有效的分析方法,用于评估用于制作弦乐器弓的伯南布哥(Caesalpina echinata Lam。)木材的质量。为此,根据其对制作高品质弓箭的适用性对30个伯南布哥木棍进行了排名,并将它们划分为以下类别之一:0 =非常差到差,1 =很好到非常好以及2 =很好。考虑到贫困类别中的样本数量较少,分类研究的重点是两个较高质量组的样本之间的区别。线性判别分析(LDA)作为一种分类技术应用于NIR数据,并且为了确保对象(样本)数量和变量数量(不同波数下的吸光度)之间更合适的比率,LDA之前进行了特征选择。基于LDA,通过交叉验证程序可以正确分类100%的样本,并正确预测92.6%的样本。

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