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Gas chromatography-ion mobility spectrometric classification of vegetable oils based on digital image processing

机译:基于数字图像处理的植物油 - 离子离子迁移光谱分类

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摘要

In this paper, a headspace instrument equipped with gas chromatography-ion mobility spectrometry (GC-IMS) was used to classify three kinds of vegetable oils in cooperation with chemometric tools. The procedure contained direct loading of the vegetableoil sample into a vial, headspace generation, and automatic injection of volatile organic components into GC-IMS device. A total of 187 oil samples were detected by GC-IMS, and Otsu’s threshold segmentation and colorized difference methods were adoptedto realize automatic peak detection of two-dimensional matrix and comparative visualization for further chemometric pretreatment. Based on the obtained data, principal components analysis showed that 95.77% of sample information could be explained by the first two principal components. Moreover, the oil samples were divided into calibration set (n=130) and prediction set (n=57), and the model built by the k-nearest neighbors algorithm showed that the recognition accuracy of calibration set was 100% andthe recognition accuracy of prediction set was 98.24%. These results verify that digital image processing methods applied to GC-IMS datasets could preserve chemical information and support qualitative analysis. Thus, GC-IMS technique can be considered a vanguard and reliable tool for recognition of different types of common vegetable oils.
机译:本文用气相色谱 - 离子迁移率(GC-IMS)的顶空仪器用于与化学计量工具合作分类三种植物油。该程序含有蔬菜油样品的直接加载,进入小瓶,顶空生成,并将挥发性有机组分自动注射到GC-IMS装置中。通过GC-IMS检测到总共187个油样,并采用OTSU的阈值分割和着色差异方法来实现二维基质的自动峰值检测和进一步的化学计量预处理的比较可视化。基于所获得的数据,主成分分析表明,95.77%的样本信息可以通过前两个主要成分解释。此外,将油样划分为校准组(n = 130)和预测集(n = 57),并且由k-collect邻居算法构建的模型显示校准集的识别精度为100%,识别精度预测套装为98.24%。这些结果验证应用于GC-IMS数据集的数字图像处理方法可以保护化学信息并支持定性分析。因此,GC-IMS技术可以被认为是先锋和可靠的工具,用于识别不同类型的常见植物油。

著录项

  • 来源
  • 作者

    Tong Chen; Xingpu Qi; Daoli Lu;

  • 作者单位

    School of Food and Biological Engineering Jiangsu University Zhenjiang 212013 People’s Republic of China;

    Jiangsu Agri-animal Husbandry Vocational College No 8 East Phoenix Road Taizhou 225300 Jiangsu People’s Republic of China;

    School of Food and Biological Engineering Jiangsu University Zhenjiang 212013 People’s Republic of China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 食品工业;
  • 关键词

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