Robotics, Automation and Computer Vision Group, University of Jaén, 23071 Jaén, Spain.
Department of Agriculture, Food and Environment, University of Pisa, 56126 Pisa, Italy.
Sensors (Basel). 2021 Mar 25;21(7):2298. doi: 10.3390/s21072298.
The organoleptic profile of a Virgin Olive Oil is a key quality parameter that is currently obtained by human sensory panels. The development of an instrumental technique capable of providing information about this profile quickly and online is of great interest. This work employed a general purpose e-nose, in lab conditions, to predict the level of fruity aroma and the presence of defects in Virgin Olive Oils. The raw data provided by the e-nose were used to extract a set of features that fed a regressor to predict the level of fruity aroma and a classifier to detect the presence of defects. The results obtained were a mean validation error of 0.5 units for the prediction of fruity aroma using lasso regression; and 88% accuracy for the defect detection using logistic regression. Finally, the identification of two out of ten specific sensors of the e-nose that can provide successful results paves the way to the design of low-cost specific electronic noses for this application.
橄榄油的感官特征是一个关键的质量参数,目前是通过人类感官小组获得的。开发一种能够快速在线提供有关该特征信息的仪器技术非常重要。本工作采用通用电子鼻,在实验室条件下,预测特级初榨橄榄油的果香水平和缺陷的存在。电子鼻提供的原始数据被用来提取一组特征,这些特征被送入回归器来预测果香水平,送入分类器来检测缺陷的存在。使用套索回归预测果香的验证平均误差为 0.5 个单位;使用逻辑回归检测缺陷的准确率为 88%。最后,确定电子鼻中十个特定传感器中的两个可以提供成功的结果,为设计用于此应用的低成本特定电子鼻铺平了道路。