Automatic ham classification method based on support vector machine model increases accuracy and benefits compared to manual classification
Autor/a
Otros/as autores/as
Fecha de publicación
2019ISSN
0309-1740
Resumen
The thickness of the subcutaneous fat (SFT) is a very important parameter in the ham, since determines the
process the ham will be submitted. This study compares two methods to predict the SFT in slaughter line: an
automatic system using an SVM model (Support Vector Machine) and a manual measurement of the fat carried
out by an experienced operator, in terms of accuracy and economic benefit. These two methods were compared
to the golden standard obtained by measuring SFT with a ruler in a sample of 400 hams equally distributed
within each SFT class. The results show that the SFT prediction made by the SVM model achieves an accuracy of
75.3%, which represents an improvement of 5.5% compared to the manual measurement. Regarding economic
benefits, SVM model can increase them between 12 and 17%. It can be concluded that the classification using
SVM is more accurate than the one performed manually with an increase of the economic benefit for sorting.
Tipo de documento
Artículo
Versión del documento
Versión publicada
Lengua
Inglés
Materias (CDU)
663/664 - Alimentos y nutrición. Enología. Aceites. Grasas
Palabras clave
Páginas
7 p.
Publicado por
Elsevier
Citación recomendada
Masferrer, G., Carreras, R., Font-i-Furnols, M., Gispert, M., Serra, M., Marti-Puig, P. (2019) Automatic ham classification method based on support vector machine model increases accuracy and benefits compared to manual classification. Meat science, 155. https://doi.org/10.1016/j.meatsci.2019.04.018
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