Pradana-Lopez Sandra, Perez-Calabuig Ana M, Cancilla John C, Garcia-Rodriguez Yolanda, Torrecilla José S
Departamento de Ingeniería Química y de Materiales, Universidad Complutense de Madrid, 28040 Madrid, Spain.
Scintillon Institute, San Diego, CA, United States.
Food Chem. 2022 Jan 30;368:130765. doi: 10.1016/j.foodchem.2021.130765. Epub 2021 Aug 3.
In this research, more than 302,000 images of five different types of extra virgin olive oils (EVOOs) have been collected to train and validate a system based on convolutional neural networks (CNNs) to carry out their classification. Furthermore, comparable deep learning models have also been trained to detect and quantify the adulteration of these EVOOs with other vegetable oils. In this work, three groups of CNN models have been tested for (i) the classification of all EVOOs, (ii) the detection and quantification of adulterated samples for each individual EVOO, and (iii) a global version of the previous models combining all EVOOs into a single quantifying CNN. This last model was successfully validated using 30,195 images that were initially isolated from the initial database. The result was an algorithm capable of detecting and accurately classifying the five types of EVOO and their respective adulteration concentrations with an overall hit rate of >96%. Therefore, EVOO droplet analyses via CNNs have proven to be a convincing quality control tool for the evaluation of EVOO, which can be carried by producers, distributors, or even final consumers, to help locate adulterations.
在本研究中,已收集了超过30.2万张五种不同类型特级初榨橄榄油(EVOO)的图像,用于训练和验证基于卷积神经网络(CNN)的系统以对其进行分类。此外,还训练了可比较的深度学习模型,以检测和量化这些EVOO与其他植物油的掺假情况。在这项工作中,测试了三组CNN模型,分别用于(i)所有EVOO的分类,(ii)每种单独EVOO掺假样品的检测和量化,以及(iii)将所有EVOO合并到单个量化CNN中的先前模型的全局版本。使用最初从初始数据库中分离出的30195张图像成功验证了最后一个模型。结果是得到了一种算法,该算法能够检测并准确分类五种类型的EVOO及其各自的掺假浓度,总体命中率>96%。因此,通过CNN进行的EVOO液滴分析已被证明是一种用于评估EVOO的令人信服的质量控制工具,生产商、经销商甚至最终消费者都可以使用它来帮助发现掺假情况。