4.6 Article

Deep Learning Techniques to Improve the Performance of Olive Oil Classification

期刊

FRONTIERS IN CHEMISTRY
卷 7, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fchem.2019.00929

关键词

olive oil classification; chemometric approaches; GC-IMS method; machine learning; deep learning; feed-forward neural network

资金

  1. Spanish Ministry of Economy and Competitivity [TIN2017-88209-C2-2-R]
  2. Spanish Ministry of Education, Culture and Sport

向作者/读者索取更多资源

The olive oil assessment involves the use of a standardized sensory analysis according to the panel test method. However, there is an important interest to design novel strategies based on the use of Gas Chromatography (GC) coupled to mass spectrometry (MS), or ion mobility spectrometry (IMS) together with a chemometric data treatment for olive oil classification. It is an essential task in an attempt to get the most robust model over time and, both to avoid fraud in the price and to know whether it is suitable for consumption or not. The aim of this paper is to combine chemical techniques and Deep Learning approaches to automatically classify olive oil samples from two different harvests in their three corresponding classes: extra virgin olive oil (EVOO), virgin olive oil (VOO), and lampante olive oil (LOO). Our Deep Learning model is built with 701 samples, which were obtained from two olive oil campaigns (2014-2015 and 2015-2016). The data from the two harvests are built from the selection of specific olive oil markers from the whole spectral fingerprint obtained with GC-IMS method. In order to obtain the best results we have configured the parameters of our model according to the nature of the data. The results obtained show that a deep learning approach applied to data obtained from chemical instrumental techniques is a good method when classifying oil samples in their corresponding categories, with higher success rates than those obtained in previous works.

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