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首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >Different feature selection strategies in the wavelet domain applied to NIR-based quality classification models of bread wheat flours
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Different feature selection strategies in the wavelet domain applied to NIR-based quality classification models of bread wheat flours

机译:小波域中不同特征选择策略应用于基于NIR的面包粉质量分类模型

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摘要

The Synthetic Quality Index method (Indice Sintetico di Qualita, ISQ) is used in the Italian cereal trade context for the classification of bread wheat in different quality categories, and consists in the assignation by an expert assessor of each wheat sample to the most fitting class, on the basis of parameters reflecting chemical and rheological properties of the flour. The high uncertainty of this procedure has been recently proved by some of us using a panel test, which confirmed a quite large degree of subjectivity in the assignation of samples to the quality classes. However, the results obtained with the panel test allowed to identify samples whose class assignation is sufficiently univocal, to be used for the development of automated classification methods based on NIR spectra. In the present work, multivariate classification models have been calculated using the WPTER algorithm, which aims at selecting - among the wavelet coefficients derived by application of the Wavelet Packet Transform to the analysed NIR spectra - only those features leading to the best possible discrimination among the considered classes. In particular, WPTER has been used following three different strategies to choose the optimal conditions for the development of SIMCA class models. Due to the restricted number of objects, the statistical validity of the models has been evaluated using a newly developed algorithm, which performs a double cross-validation of the SIMCA models, and by comparison with the results obtained by permutation tests.
机译:综合谷物质量指数方法(Indice Sintetico di Qualita,ISQ)在意大利谷物贸易中用于对不同品质类别的面包小麦进行分类,其中包括由专家评估员将每个小麦样品分配到最合适的类别,根据反映面粉化学和流变特性的参数确定。我们中的一些人最近使用面板检验证明了该方法的高度不确定性,该检验证实了在将样品分配给质量等级时具有相当大的主观性。但是,通过面板测试获得的结果允许识别其类别分配足够明确的样本,以用于开发基于NIR光谱的自动分类方法。在当前工作中,已使用WPTER算法计算了多变量分类模型,该模型旨在-在通过将小波包变换应用于分析的NIR光谱而得出的小波系数中,仅选择那些导致最佳分辨的特征。被认为是阶级。尤其是,WPTER已按照以下三种不同的策略来选择用于开发SIMCA类模型的最佳条件。由于对象数量的限制,已使用新开发的算法对模型的统计有效性进行了评估,该算法对SIMCA模型进行了双重交叉验证,并与通过置换测试获得的结果进行了比较。

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