Image-based deep learning automated sorting of date fruit

Deep Convolutional Neural Network (CNN) with a unique structure for combining the feature extraction and classification stages, has been considered to be a state-of-the-art computer vision technique for classification tasks. This study presents a novel and accurate method for discriminating healthy...

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Veröffentlicht in:Postharvest biology and technology 2019-07, Vol.153, p.133-141
Hauptverfasser: Nasiri, Amin, Taheri-Garavand, Amin, Zhang, Yu-Dong
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container_title Postharvest biology and technology
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creator Nasiri, Amin
Taheri-Garavand, Amin
Zhang, Yu-Dong
description Deep Convolutional Neural Network (CNN) with a unique structure for combining the feature extraction and classification stages, has been considered to be a state-of-the-art computer vision technique for classification tasks. This study presents a novel and accurate method for discriminating healthy date fruit (cv. Shahani), from defective ones. Furthermore, owing to the use of deep CNN, this method is able to predict the ripening stage of the healthy dates. The proposed CNN model was constructed from VGG-16 architecture which was followed by max-pooling, dropout, batch normalization, and dense layers. This model was trained and tested on an image dataset containing four classes, namely Khalal, Rutab, Tamar, and defective date. This dataset was collected by a smartphone under uncontrolled conditions with respect to illumination and camera parameters such as focus and camera stabilization. The CNN model was able to achieve an overall classification accuracy of 96.98%. The experimental results on the suggested model demonstrated that the CNN model outperforms the traditional classification methods that rely on feature engineering for discrimination of date fruit images.
doi_str_mv 10.1016/j.postharvbio.2019.04.003
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subjects Artificial neural networks
Classification
Computer vision
Convolutional neural network
Datasets
Date fruit
Deep learning
Defective date
Feature extraction
Fruits
Maturity stages
Neural networks
Ripening
Smartphones
title Image-based deep learning automated sorting of date fruit
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