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Application of computer vision and Support Vector Machines to estimate the content of impurities in olive oil samples

机译:计算机视觉和支持向量机的应用来估算橄榄油样品中杂质的含量

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The determination of the content of impurities is a very frequent analysis performed on virgin olive oil samples, but the official method established in the European norm CE 2568/91 is quite work-intensive, and it would be convenient to have an alternative approximate method to evaluate the performance of the impurity removal process. In this work we develop a system based on computer vision and pattern recognition to classify the content of impurities of the olive oil samples in three sets, indicative of the goodness of the separation process of olive oil after its extraction from the paste. Starting from the histograms of the channels of the RGB, CIELAB and HSV color spaces, we construct an initial input parameter vector and perform a feature extraction previous to the classification. Several linear and non-linear feature extraction techniques were evaluated, and the classifiers used were Support Vector Machines. The best classification rate achieved was 87.66%, obtained using KPCA and a grade-3-polynomial kernel SVM.
机译:杂质含量的测定是对初榨橄榄油样品进行的非常频繁的分析,但在欧洲常规CE 2568/91中建立的官方方法是相当的工作密集型,并且可以方便地具有替代的近似方法评估杂质去除过程的性能。在这项工作中,我们基于计算机视觉和模式识别开发一个系统,以将三组橄榄油样品的杂质含量分类,指示橄榄油在其从浆料中提取后的分离过程的良好。从RGB,CIElab和HSV颜色空间的通道的直方图开始,我们构建初始输入参数向量,并在分类之前执行特征提取。评估了几种线性和非线性特征提取技术,使用的分类器是支持载体机。获得的最佳分类率为87.66%,使用KPCA和3级多项式核SVM获得。

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