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Independent Component Analysis and Support Vector Machine Combined for Brands Identification of Milk Powder based on Visible and Short-wave Near-infrared Spectroscopy

机译:基于可见和短波近红外光谱法的乳粉品牌鉴定的独立分量分析和支持向量机。

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The aim of this paper is to investigate the potential of Visible and short-wave near-infrared spectroscopy (Vis/SWNIR) technique used for brand discrimination of milk powder. Fifty samples for each brand were studied. Based on the independent components (ICs) as the input variable obtained from fast fixed-point independent component analysis (FastICA), Least-squares Support Vector Machine (LS-SVM) was applied to building the prediction model. The discrimination rate of LS-SVM model which was established based on FastICA was reached at 100%. LS-SVM model and partial least squares model, which were both established based on the whole measurement region, were also established. The identification results of these two models are worse than LS-SVM which was established based on ICs. It is concluded that Vis/SWNIR technique is available for the brand identification of milk powder fast and nondestructively.
机译:本文的目的是研究用于奶粉品牌鉴别的可见和短波近红外光谱(VIS / SWNIR)技术的潜力。研究了每个品牌的50个样本。基于独立的组件(IC)作为从快速定点独立分量分析(FastICA)获得的输入变量,应用于构建预测模型的最小二乘支持向量机(LS-SVM)。基于Fastica建立的LS-SVM模型的歧视率达到100%。还建立了基于整个测量区域建立的LS-SVM模型和部分最小二乘模型。这两种模型的识别结果比LS-SVM差,这是基于IC建立的。结论是,VIS / SWNIR技术可用于快速和无损性的奶粉品牌鉴定。

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