Expert system based on computer vision to estimate the content of impurities in olive oil samples
Fecha
2013-06-01
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Resumen
The determination of the content of impurities is a very frequent analysis performed on virgin olive oil
samples, but the official method 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 Red–Green–Blue (RGB),
CIELAB and Hue-Saturation-Value (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 (SVMs) and Artificial
Neural Networks (ANNs). The best classification rate achieved was 87.66%, obtained using Kernel
Principal Components Analysis (KPCA) and a grade-3-polynomial kernel SVM. The best result using ANNs
was 82.38%, yielded by the use of Principal Component Analysis (PCA) with the Perceptron.
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Olive oil, Olive oil analysis, Computer vision, Support vector machines, Artificial neural networks
Citación
Marchal, P. C., Gila, D. M. M., Garcia, J. G., & Ortega, J. G. (2013). Expert system based on computer vision to estimate the content of impurities in olive oil samples. Journal of Food Engineering, 119(2), 220–228. https://doi.org/10.1016/j.jfoodeng.2013.05.032