首页> 外文期刊>Food analytical methods >A Fast and Inexpensive Chemometric-Assisted Method to Identify Adulteration in Acai ( Emphasis Type='Italic'>Euterpe oleracea/Emphasis>) Using Digital Images
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A Fast and Inexpensive Chemometric-Assisted Method to Identify Adulteration in Acai ( Emphasis Type='Italic'>Euterpe oleracea/Emphasis>) Using Digital Images

机译:一种快速且廉价的化学计量辅助方法,用于使用数字图像识别ACAI掺杂(&强调=“斜体”> Euterpe Oleracea& / Emphasis>)

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摘要

This work is concerned with an analytical method for detecting acai adulteration based on digital image (DI) assisted by mean one-class classification (OCC) chemometric approaches, namely data-driven soft independent modeling of class analogy (DD-SIMCA) and one-class partial least squares (OC-PLS). In this study, two adulterants were considered, wheat flour and cassava. Digital images were acquired, in triplicate, using a webcam (WC040 MULTILASER of 5?Mp, 2G glass lenses with USB connection) in a closed wooden box with appropriate lighting and stored in JPEG format (24?bits) with a dimension of 2880?×?1620 pixels. For all the images, a central circular area was defined, used the working region to construct the frequency histograms in the color levels considering the standard RGB (red-green-blue), HSI (hue-saturation-intensity), and grayscale color models. Preliminary results obtained by principal component analysis (PCA) indicated the formation of two sample clusters (adulterated and unadulterated). On the other hand, the formation of sample clusters with respect to the type of adulterant (wheat and cassava) was not observed. OCC (DD-SIMCA and OC-PLS) models were built using eight and four factors, respectively, showing satisfactory fit. In the prediction of an external set of samples, the following results were obtained: error rate (ER) 2 and 31%, SEN 100% for both models, and specificity (SPE) 98.14 and 78.69 for DD-SIMCA and OC-PLS, respectively.
机译:这项工作涉及基于数码图像(DI)的分析方法,通过平均一类分类(OCC)化学方法,即数据驱动的类比(DD-SIMCA)和一个 - 一个 - 类偏最小二乘(oc-pls)。在这项研究中,考虑了两种掺杂剂,小麦粉和木薯。在一个封闭的木箱中使用网络摄像头(WC040 Multibers,2G玻璃镜头,2G玻璃镜片,带USB连接)的Web摄像头(WC040 Multibers,带有USB连接),并以适当的照明器(24位)(24位)的尺寸为2880? ×1620像素。对于所有图像,定义了中央圆形区域,使用工作区域在考虑标准RGB(红绿),HSI(HUE饱和 - 强度)和灰度颜色模型中构造颜色级别的频率直方图。通过主成分分析(PCA)获得的初步结果表明了两个样品簇(掺假和鞣制)的形成。另一方面,未观察到相对于掺假局(小麦和木薯)的样品簇的形成。 OCC(DD-SIMCA和OC-PLS)模型分别使用八个和四个因素构建,显示令人满意的配合。在预测外部样本集中,获得以下结果:误差率(ER)2和31%,型号为型号的100%,以及DD-SIMCA和OC-PL的特异性(SPE)98.14和78.69,分别。

著录项

  • 来源
    《Food analytical methods》 |2018年第7期|共7页
  • 作者单位

    Laboratório Paraense de Desenvolvimento Analítico e Quimiometria–LPDAQ Faculdade de Química Instituto de Ciências Exatas Universidade Federal do Sul e Sudeste do Pará;

    Laboratório Paraense de Desenvolvimento Analítico e Quimiometria–LPDAQ Faculdade de Química Instituto de Ciências Exatas Universidade Federal do Sul e Sudeste do Pará;

    Laboratório Paraense de Desenvolvimento Analítico e Quimiometria–LPDAQ Faculdade de Química Instituto de Ciências Exatas Universidade Federal do Sul e Sudeste do Pará;

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  • 原文格式 PDF
  • 正文语种 other
  • 中图分类 食品工业;
  • 关键词

    Acai; Adulteration; Digital images; One-class classification;

    机译:acai;掺假;数字图像;单级分类;

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