Banana ripeness classification using computer vision-based mobile application
The integration of smartphone applications with the increasingly growing influence of artificial intelligence provides users with new ways to do about anything and allows users to be practical. In this paper, a mobile application to identify the ripeness of banana fruits is built by implementing a...
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my.iium.irep.1134452024-07-29T01:41:18Z http://irep.iium.edu.my/113445/ Banana ripeness classification using computer vision-based mobile application Mohamedon, Muhammad Farhan Abd Rahman, Faridah Mohamad, Sarah Yasmin Khalifa, Othman Omran TK7885 Computer engineering The integration of smartphone applications with the increasingly growing influence of artificial intelligence provides users with new ways to do about anything and allows users to be practical. In this paper, a mobile application to identify the ripeness of banana fruits is built by implementing a computer vision technique. Image classification is performed by adopting transfer learning to extract edges from a pretrained model. Convolutional neural network (CNN) model is used to train the classifier. Banana is chosen as an instance due to its short shelf life and widely consumed by Malaysian. For this project, Google Colab is utilized for the code execution as it is run on cloud and well-suited for machine learning. TensorFlow Lite with Model Maker library simplified the process of adapting and converting a TensorFlow neuralnetwork model to particular input data before deploying to an Android application. The result emerged with an accuracy of 98.25%. The app can instantly recognize banana live image, display the ripeness level on the screen based on highest percentage matched and display the ripeness, enabling the users to identify the banana ripeness quickly and easily. IEEE 2021-07-01 Proceeding Paper PeerReviewed application/pdf en http://irep.iium.edu.my/113445/7/113445_Banana%20ripeness%20classification%20using%20computer.pdf application/pdf en http://irep.iium.edu.my/113445/8/113445_Banana%20ripeness%20classification%20using%20computer_Scopus.pdf Mohamedon, Muhammad Farhan and Abd Rahman, Faridah and Mohamad, Sarah Yasmin and Khalifa, Othman Omran (2021) Banana ripeness classification using computer vision-based mobile application. In: 2021 8th International Conference on Computer and Communication Engineering (ICCCE), 22-23 June 2021, Kuala Lumpur, Malaysia. https://ieeexplore.ieee.org/document/9467225 10.1109/ICCCE50029.2021.9467225 |
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TK7885 Computer engineering Mohamedon, Muhammad Farhan Abd Rahman, Faridah Mohamad, Sarah Yasmin Khalifa, Othman Omran Banana ripeness classification using computer vision-based mobile application |
description |
The integration of smartphone applications with
the increasingly growing influence of artificial intelligence
provides users with new ways to do about anything and allows users to be practical. In this paper, a mobile application to identify the ripeness of banana fruits is built by implementing a computer vision technique. Image classification is performed by adopting transfer learning to extract edges from a pretrained model. Convolutional neural network (CNN) model is used to train the classifier. Banana is chosen as an instance due to its short shelf life and widely consumed by Malaysian. For
this project, Google Colab is utilized for the code execution as
it is run on cloud and well-suited for machine learning.
TensorFlow Lite with Model Maker library simplified the
process of adapting and converting a TensorFlow neuralnetwork model to particular input data before deploying to an Android application. The result emerged with an accuracy of 98.25%. The app can instantly recognize banana live image, display the ripeness level on the screen based on highest percentage matched and display the ripeness, enabling the users to identify the banana ripeness quickly and easily. |
format |
Proceeding Paper |
author |
Mohamedon, Muhammad Farhan Abd Rahman, Faridah Mohamad, Sarah Yasmin Khalifa, Othman Omran |
author_facet |
Mohamedon, Muhammad Farhan Abd Rahman, Faridah Mohamad, Sarah Yasmin Khalifa, Othman Omran |
author_sort |
Mohamedon, Muhammad Farhan |
title |
Banana ripeness classification using computer vision-based mobile application |
title_short |
Banana ripeness classification using computer vision-based mobile application |
title_full |
Banana ripeness classification using computer vision-based mobile application |
title_fullStr |
Banana ripeness classification using computer vision-based mobile application |
title_full_unstemmed |
Banana ripeness classification using computer vision-based mobile application |
title_sort |
banana ripeness classification using computer vision-based mobile application |
publisher |
IEEE |
publishDate |
2021 |
url |
http://irep.iium.edu.my/113445/7/113445_Banana%20ripeness%20classification%20using%20computer.pdf http://irep.iium.edu.my/113445/8/113445_Banana%20ripeness%20classification%20using%20computer_Scopus.pdf http://irep.iium.edu.my/113445/ https://ieeexplore.ieee.org/document/9467225 |
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1805880588495749120 |
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13.188404 |