Performance Analysis of Deep Learning CNN Models for Variety Classification in Hazelnut

In evaluating agricultural products, knowing the specific product varieties is important for the producer, the industrialist, and the consumer. Human labor is widely used in the classification of varieties. It is generally performed by visual examination of each sample by experts, which is very labo...

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Veröffentlicht in:Sustainability 2021-06, Vol.13 (12), p.6527
Hauptverfasser: Taner, Alper, Öztekin, Yeşim Benal, Duran, Hüseyin
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creator Taner, Alper
Öztekin, Yeşim Benal
Duran, Hüseyin
description In evaluating agricultural products, knowing the specific product varieties is important for the producer, the industrialist, and the consumer. Human labor is widely used in the classification of varieties. It is generally performed by visual examination of each sample by experts, which is very laborious and time-consuming with poor sensitivity. There is a need in commercial hazelnut production for a rapid, non-destructive and reliable variety classification in order to obtain quality nuts from the orchard to the consumer. In this study, a convolutional neural network, which is one of the deep learning methods, was preferred due to its success in computer vision. A total of 17 widely grown hazelnut varieties were classified. The proposed model was evaluated by comparing with pre-trained models. Accuracy, precision, recall, and F1-Score evaluation metrics were used to determine the performance of classifiers. It was found that the proposed model showed a better performance than pre-trained models in terms of performance evaluation criteria. The proposed model was found to produce 98.63% accuracy in the test set, including 510 images. This result has shown that the proposed model can be used practically in the classification of hazelnut varieties.
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source MDPI - Multidisciplinary Digital Publishing Institute; EZB-FREE-00999 freely available EZB journals
subjects Agricultural products
Agriculture
Artificial intelligence
Classification
Computer vision
Datasets
Deep learning
Fruits
Hazelnuts
Model accuracy
Neural networks
Sustainability
title Performance Analysis of Deep Learning CNN Models for Variety Classification in Hazelnut
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