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Screening for Coffee Adulteration Using Digital Images and SPA-LDA

机译:使用数字图像和SPA-LDA筛选咖啡掺假

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摘要

In this paper, we propose a new methodology to identify adulterations in ground roasted coffees (due to the presence of husks and sticks) using digital images and the successive projections algorithm for variable selection in association with linear discriminant analysis (SPA-LDA). A simple document scanner was used for capturing the images, and a Petri dish support with eight circular holes (one for each sample) to be scanned was employed. Color histograms in the hue-luminosity-saturation (HLS) channels extracted from the digital images were used as input data and statistically evaluated using supervised pattern recognition techniques. For comparison with SPA-LDA, soft independent modeling by class analogy (SIMCA) and partial least squares discriminant analysis (PLS-DA) were also used. In general, SPA-LDA provided significantly better performance than the other classification models, reaching a mean accuracy of 92.5 % for both the training and test sets, while SIMCA and PLS-DA attained only 71.5 and 85.5 %, respectively. More specifically, all of the models presented high rates (above 90 %) for sensitivity and specificity (in the test set samples classification), except SIMCA, which presented a specificity rate of 76 %. Moreover, the SPA-LDA model generally showed the lowest classification error rates. As such, it is a more adequate chemometric tool for discriminating pure coffee samples and adulterated by husks and sticks. The proposed strategy avoided laborious sample preparation, and additional operational costs, assessing coffee adulteration by husks and sticks.
机译:在本文中,我们提出了一种新的方法,该方法使用数字图像和用于线性选择判别分析(SPA-LDA)的变量选择的连续投影算法,来识别磨碎的咖啡中的掺假(由于存在皮和棒)。使用简单的文档扫描仪捕获图像,并使用具有八个要扫描的圆形孔(每个样品一个)的培养皿支架。从数字图像中提取的色相饱和度(HLS)通道中的颜色直方图用作输入数据,并使用监督模式识别技术进行统计评估。为了与SPA-LDA进行比较,还使用了基于类比的软独立建模(SIMCA)和偏最小二乘判别分析(PLS-DA)。总的来说,SPA-LDA的性能明显优于其他分类模型,训练集和测试集的平均准确度均达到92.5%,而SIMCA和PLS-DA分别仅达到71.5%和85.5%。更具体地说,除SIMCA以外,所有模型的敏感性和特异性均很高(在测试集样本分类中)超过90%(SIMCA的特异性率为76%)。此外,SPA-LDA模型通常显示出最低的分类错误率。因此,它是一种更合适的化学计量工具,可用来区分纯咖啡样品以及被果壳和棍棒掺假的咖啡。拟议的策略避免了费力的样品制备过程,并避免了额外的运营成本,从而通过果壳和棍棒评估了咖啡掺假情况。

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