Digital assessment of post-harvest Nendran banana for faster grading: CNN-based ripeness classification model

Banana (Musa spp.) is an extensively favored fruit owing to its affordability and considerable nutritional richness. Ensuring the quality of bananas is essential for meeting consumer expectations and international export standards. Post-harvest handling, particularly grading, plays a pivotal role in...

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Veröffentlicht in:Postharvest biology and technology 2024-08, Vol.214, p.112972, Article 112972
Hauptverfasser: Arunima, P.L., Gopinath, Pratheesh P., Geetha Lekshmi, P.R., Esakkimuthu, M.
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container_start_page 112972
container_title Postharvest biology and technology
container_volume 214
creator Arunima, P.L.
Gopinath, Pratheesh P.
Geetha Lekshmi, P.R.
Esakkimuthu, M.
description Banana (Musa spp.) is an extensively favored fruit owing to its affordability and considerable nutritional richness. Ensuring the quality of bananas is essential for meeting consumer expectations and international export standards. Post-harvest handling, particularly grading, plays a pivotal role in sorting and classifying bananas. It is crucial for quality assurance, aligning with consumer preferences, gaining market access, differentiating prices based on quality, minimizing waste, optimizing packaging efficiency and enhancing the overall effectiveness of the supply chain. The manual grading is accountable for a considerable range of post-harvest losses. The Convolutional Neural Network (CNN) is widely recognized as a state-of-the-art computer vision technique for classification tasks. In this investigation, a CNN-based deep learning approach is introduced for the ripening classification of the Nendran banana. This study focused on the development and evaluation of a CNN model using a dataset of 4320 images. Pre-existing Deep Learning (DL) models (VGG16, VGG19, InceptionV3, ResNet50 and EfficientNetB0) were employed for comparison, and the developed model achieved 95 % accuracy. A web application titled 'Banana Ripeness Identification App’, was developed using the proposed model. Notably, the proposed model outperformed existing DL models, emphasizing its superior classification accuracy. The study concluded that the 9-layer CNN model is highly effective and surpasses established DL architectures, which can serve as a foundation for the advancement of efficient classification methods for bananas based on their ripeness, consequently enhancing post-harvest management. •Developed a new CNN model for banana ripeness classification.•The developed model outperformed all the existing classification models.•The model can be used in hand-held devices for grading banana.•4320 images collected and made opensource.•A web application developed to showcase the ability of the developed model.
doi_str_mv 10.1016/j.postharvbio.2024.112972
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Ensuring the quality of bananas is essential for meeting consumer expectations and international export standards. Post-harvest handling, particularly grading, plays a pivotal role in sorting and classifying bananas. It is crucial for quality assurance, aligning with consumer preferences, gaining market access, differentiating prices based on quality, minimizing waste, optimizing packaging efficiency and enhancing the overall effectiveness of the supply chain. The manual grading is accountable for a considerable range of post-harvest losses. The Convolutional Neural Network (CNN) is widely recognized as a state-of-the-art computer vision technique for classification tasks. In this investigation, a CNN-based deep learning approach is introduced for the ripening classification of the Nendran banana. This study focused on the development and evaluation of a CNN model using a dataset of 4320 images. Pre-existing Deep Learning (DL) models (VGG16, VGG19, InceptionV3, ResNet50 and EfficientNetB0) were employed for comparison, and the developed model achieved 95 % accuracy. A web application titled 'Banana Ripeness Identification App’, was developed using the proposed model. Notably, the proposed model outperformed existing DL models, emphasizing its superior classification accuracy. 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source Elsevier ScienceDirect Journals
subjects affordability
Banana
bananas
Classification
computer vision
Convolutional neural network
data collection
Deep learning
exports
fruits
Internet
market access
Musa
neural networks
nutritive value
quality control
Ripening stages
supply chain
wastes
title Digital assessment of post-harvest Nendran banana for faster grading: CNN-based ripeness classification model
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