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  4. Discrimination of foreign bodies in quinoa <i>(Chenopodium quinoa</i> Willd.) grains using convolutional neural networks with a transfer learning approach

Discrimination of foreign bodies in quinoa <i>(Chenopodium quinoa</i> Willd.) grains using convolutional neural networks with a transfer learning approach

Author(s)
Himer Ávila-George
Miguel De‐la‐Torre
Jorge Sánchez-Garcés
Wilson Castro
Date Issued
30 de enero de 2023
Type
Article
Volume
11
Start Page
e14808
End Page
e14808
DOI
10.7717/peerj.14808
Abstract
Willd.) is due to its high protein content and gluten-free condition; nonetheless, the presence of foreign bodies in quinoa processing facilities is an issue that must be addressed. As a result, convolutional neural networks have been adopted, mostly because of their data extraction capabilities, which had not been utilized before for this purpose. Consequently, the main objective of this work is to evaluate convolutional neural networks with a learning transfer for foreign bodies identification in quinoa samples. For experimentation, quinoa samples were collected and manually split into 17 classes: quinoa grains and 16 foreign bodies. Then, one thousand images were obtained from each class in RGB space and transformed into four different color spaces (L*a*b*, HSV, YCbCr, and Gray). Three convolutional neural networks (AlexNet, MobileNetv2, and DenseNet-201) were trained using the five color spaces, and the evaluation results were expressed in terms of accuracy and F-score. All the CNN approaches compared showed an F-score ranging from 98% to 99%; both color space and CNN structure were found to have significant effects on the F-score. Also, DenseNet-201 was the most robust architecture and, at the same time, the most time-consuming. These results evidence the capacity of CNN architectures to be used for the discrimination of foreign bodies in quinoa processing facilities.
Subjects

Chenopodium quinoa

Convolutional neural ...

Artificial intelligen...

Transfer of learning

Pattern recognition (...

Computer science

Mathematics

Botany

Biology

Chenopodium quinoa

Convolutional neural ...

Artificial intelligen...

Transfer of learning

Pattern recognition (...

Computer science

Mathematics

Botany

Biology

Machine Learning

Machine Learning

Machine Learning

Seeds chemistry

Seeds chemistry

Seeds chemistry

Neural Networks, Comp...

Neural Networks, Comp...

Neural Networks, Comp...

Chenopodium quinoa ch...

Chenopodium quinoa ch...

Chenopodium quinoa ch...

Diet, Gluten-Free

Diet, Gluten-Free

Diet, Gluten-Free

Life Sciences Agricul...

Life Sciences Agricul...

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