Wheat varieties identification based on a deep learning approach
Wheat variety recognition and authentication are essential tasks of the quality assessment in the grain chain industry, especially for seed testing and certification processes. Recognition and authentication by direct visual analysis of grains are still achieved manually. The automatic approach, bas...
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doaj-cb06dd199f7a40e48886641c116f33152021-07-27T04:08:56ZengElsevierJournal of the Saudi Society of Agricultural Sciences1658-077X2021-07-01205281289Wheat varieties identification based on a deep learning approachKarim Laabassi0Mohammed Amin Belarbi1Saïd Mahmoudi2Sidi Ahmed Mahmoudi3Kaci Ferhat4Department of Agricultural Machinery and Agro-equipments, National Higher School of Agronomy, Hassen Badi El-Harrach, Algeria; Corresponding author.Department of Computer Science, Faculty of Engineering, University of Mons, 7000 Mons, BelgiumDepartment of Computer Science, Faculty of Engineering, University of Mons, 7000 Mons, BelgiumDepartment of Computer Science, Faculty of Engineering, University of Mons, 7000 Mons, BelgiumDepartment of Agricultural Machinery and Agro-equipments, National Higher School of Agronomy, Hassen Badi El-Harrach, AlgeriaWheat variety recognition and authentication are essential tasks of the quality assessment in the grain chain industry, especially for seed testing and certification processes. Recognition and authentication by direct visual analysis of grains are still achieved manually. The automatic approach, based on computer vision and machine learning classification, provided rapid and high throughput methods. Even thus, the classification task stays a complex and challenging case at the varietal level.The present work proposes a deep learning-based approach that provides an accurate classification for wheat varietal level classification (VLC). Particularly, the Convolutional Neural network (CNN) was used to classify the wheat grain image into four varieties (Simeto, Vitron, ARZ, and HD). Furthermore, five standard CNN architectures were trained based on Transfer Learning to boost the classification performance. To assess the proposed models' quality, we used a dataset of 31,606 single-grain images collected from different Algeria regions, and their images were captured using different scanners.The results showed that the test accuracy ranged from 85% to 95.68% for varietal level classification. The best test accuracy was obtained with the DensNet201 architecture (95.68%), Inception V3 (95.62%), and MobileNet (95.49%). Hence, the proposed approach results are accurate and reliable, encouraging the deployment of such an approach in practice.http://www.sciencedirect.com/science/article/pii/S1658077X21000308CNNsGrain testingIdentification methodTransfer learningTriticum durum DesfTriticum aestivum |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Karim Laabassi Mohammed Amin Belarbi Saïd Mahmoudi Sidi Ahmed Mahmoudi Kaci Ferhat |
spellingShingle |
Karim Laabassi Mohammed Amin Belarbi Saïd Mahmoudi Sidi Ahmed Mahmoudi Kaci Ferhat Wheat varieties identification based on a deep learning approach Journal of the Saudi Society of Agricultural Sciences CNNs Grain testing Identification method Transfer learning Triticum durum Desf Triticum aestivum |
author_facet |
Karim Laabassi Mohammed Amin Belarbi Saïd Mahmoudi Sidi Ahmed Mahmoudi Kaci Ferhat |
author_sort |
Karim Laabassi |
title |
Wheat varieties identification based on a deep learning approach |
title_short |
Wheat varieties identification based on a deep learning approach |
title_full |
Wheat varieties identification based on a deep learning approach |
title_fullStr |
Wheat varieties identification based on a deep learning approach |
title_full_unstemmed |
Wheat varieties identification based on a deep learning approach |
title_sort |
wheat varieties identification based on a deep learning approach |
publisher |
Elsevier |
series |
Journal of the Saudi Society of Agricultural Sciences |
issn |
1658-077X |
publishDate |
2021-07-01 |
description |
Wheat variety recognition and authentication are essential tasks of the quality assessment in the grain chain industry, especially for seed testing and certification processes. Recognition and authentication by direct visual analysis of grains are still achieved manually. The automatic approach, based on computer vision and machine learning classification, provided rapid and high throughput methods. Even thus, the classification task stays a complex and challenging case at the varietal level.The present work proposes a deep learning-based approach that provides an accurate classification for wheat varietal level classification (VLC). Particularly, the Convolutional Neural network (CNN) was used to classify the wheat grain image into four varieties (Simeto, Vitron, ARZ, and HD). Furthermore, five standard CNN architectures were trained based on Transfer Learning to boost the classification performance. To assess the proposed models' quality, we used a dataset of 31,606 single-grain images collected from different Algeria regions, and their images were captured using different scanners.The results showed that the test accuracy ranged from 85% to 95.68% for varietal level classification. The best test accuracy was obtained with the DensNet201 architecture (95.68%), Inception V3 (95.62%), and MobileNet (95.49%). Hence, the proposed approach results are accurate and reliable, encouraging the deployment of such an approach in practice. |
topic |
CNNs Grain testing Identification method Transfer learning Triticum durum Desf Triticum aestivum |
url |
http://www.sciencedirect.com/science/article/pii/S1658077X21000308 |
work_keys_str_mv |
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