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首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >Practical comparison of sparse methods for classification of Arabica and Robusta coffee species using near infrared hyperspectral imaging
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Practical comparison of sparse methods for classification of Arabica and Robusta coffee species using near infrared hyperspectral imaging

机译:稀疏方法用于近距离高光谱成像对阿拉伯咖啡和罗布斯塔咖啡种类进行分类的实用比较

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摘要

In the present work sparse-based methods are applied to the analysis of hyperspectral images with the aim at studying their capability of being adequate methods for variable selection in a classification framework. The key aspect of sparse methods is the possibility of performing variable selection by forcing the model coefficients related to irrelevant variables to zero. In particular, two different sparse classification approaches, i.e. sPCA + kNN and sPLS-DA, were compared with the corresponding classical methods (PCA + kNN and PLS-DA) to classify Arabica and Robusta coffee species. Green coffee samples were analyzed using near infrared hyperspectral imaging and the average spectra from each hyperspectral image were used to build training and test sets; furthermore a test image was used to evaluate the performances of the considered methods at pixel-level. In our case, sparse methods led to similar results as classical methods, with the advantage of obtaining more interpretable and parsimonious models. An important result to highlight is that variable selection performed with two different sparse classification approaches converged to the selection of same spectral regions, which implies the chemical relevance of those regions in the discrimination of Arabica and Robusta coffee species. (C) 2015 Elsevier B.V. All rights reserved.
机译:在当前的工作中,基于稀疏的方法被应用于高光谱图像的分析,目的是研究它们作为分类框架中变量选择的适当方法的能力。稀疏方法的关键方面是通过将与不相关变量相关的模型系数强制为零来执行变量选择的可能性。特别是,将两种不同的稀疏分类方法,即sPCA + kNN和sPLS-DA与相应的经典方法(PCA + kNN和PLS-DA)进行了比较,以对阿拉伯咖啡和罗布斯塔咖啡进行分类。使用近红外高光谱成像对生咖啡样品进行分析,并将每个高光谱图像的平均光谱用于构建训练和测试集;此外,使用测试图像来评估所考虑方法在像素级别的性能。在我们的案例中,稀疏方法产生的结果与经典方法相似,其优势在于获得了更多可解释和简约的模型。需要强调的重要结果是,使用两种不同的稀疏分类方法进行的变量选择收敛到了相同光谱区域的选择,这暗示了这些区域在区分阿拉伯咖啡和罗布斯塔咖啡种类方面的化学相关性。 (C)2015 Elsevier B.V.保留所有权利。

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