Development of YOLO-Based Mobile Application for Detection of Defect Types in Robusta Coffee Beans

Improving the quality of Robusta coffee beans is a crucial challenge in the coffee industry to ensure that consumers receive high-quality products. However, the identification of defects in coffee beans is still largely performed manually, making the process error-prone and time-consuming. This stud...

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Main Authors: Eko Dwi Nugroho, Miranti Verdiana, Muhammad Habib Algifari, Aidil Afriansyah, Hafiz Budi Firmansyah, Alya Khairunnisa Rizkita, Richard Arya Winarta, David Gunawan
Format: Article
Language:English
Published: Politeknik Negeri Batam 2025-01-01
Series:Journal of Applied Informatics and Computing
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Online Access:https://jurnal.polibatam.ac.id/index.php/JAIC/article/view/8886
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author Eko Dwi Nugroho
Miranti Verdiana
Muhammad Habib Algifari
Aidil Afriansyah
Hafiz Budi Firmansyah
Alya Khairunnisa Rizkita
Richard Arya Winarta
David Gunawan
author_facet Eko Dwi Nugroho
Miranti Verdiana
Muhammad Habib Algifari
Aidil Afriansyah
Hafiz Budi Firmansyah
Alya Khairunnisa Rizkita
Richard Arya Winarta
David Gunawan
author_sort Eko Dwi Nugroho
collection DOAJ
description Improving the quality of Robusta coffee beans is a crucial challenge in the coffee industry to ensure that consumers receive high-quality products. However, the identification of defects in coffee beans is still largely performed manually, making the process error-prone and time-consuming. This study aims to develop a YOLO-based mobile application to detect defects in Robusta coffee beans quickly and accurately. The method employed in this study is YOLO, a deep learning-based object detection algorithm known for its real-time object detection capabilities. The application was tested using a dataset of Robusta coffee beans containing various defects, such as broken, black, and wrinkled beans. The test results indicate that the application achieves high detection accuracy, with the black bean class achieving 95.3% accuracy, while the moldy or bleached bean class records the lowest accuracy at 62.2%. This application is expected to assist farmers and coffee industry stakeholders in improving the quality of Robusta coffee beans and enhancing the efficiency of the sorting process.
format Article
id doaj-art-ae1895f82df8471db1ab12ebeaadef3b
institution OA Journals
issn 2548-6861
language English
publishDate 2025-01-01
publisher Politeknik Negeri Batam
record_format Article
series Journal of Applied Informatics and Computing
spelling doaj-art-ae1895f82df8471db1ab12ebeaadef3b2025-08-20T02:15:32ZengPoliteknik Negeri BatamJournal of Applied Informatics and Computing2548-68612025-01-019115316010.30871/jaic.v9i1.88866491Development of YOLO-Based Mobile Application for Detection of Defect Types in Robusta Coffee BeansEko Dwi Nugroho0Miranti Verdiana1Muhammad Habib Algifari2Aidil Afriansyah3Hafiz Budi Firmansyah4Alya Khairunnisa Rizkita5Richard Arya Winarta6David Gunawan7Institut Teknologi SumateraInstitut Teknologi SumateraInstitut Teknologi SumateraInstitut Teknologi SumateraInstitut Teknologi SumateraInstitut Teknologi SumateraInstitut Teknologi SumateraInstitut Teknologi SumateraImproving the quality of Robusta coffee beans is a crucial challenge in the coffee industry to ensure that consumers receive high-quality products. However, the identification of defects in coffee beans is still largely performed manually, making the process error-prone and time-consuming. This study aims to develop a YOLO-based mobile application to detect defects in Robusta coffee beans quickly and accurately. The method employed in this study is YOLO, a deep learning-based object detection algorithm known for its real-time object detection capabilities. The application was tested using a dataset of Robusta coffee beans containing various defects, such as broken, black, and wrinkled beans. The test results indicate that the application achieves high detection accuracy, with the black bean class achieving 95.3% accuracy, while the moldy or bleached bean class records the lowest accuracy at 62.2%. This application is expected to assist farmers and coffee industry stakeholders in improving the quality of Robusta coffee beans and enhancing the efficiency of the sorting process.https://jurnal.polibatam.ac.id/index.php/JAIC/article/view/8886robustayolocoffee beans
spellingShingle Eko Dwi Nugroho
Miranti Verdiana
Muhammad Habib Algifari
Aidil Afriansyah
Hafiz Budi Firmansyah
Alya Khairunnisa Rizkita
Richard Arya Winarta
David Gunawan
Development of YOLO-Based Mobile Application for Detection of Defect Types in Robusta Coffee Beans
Journal of Applied Informatics and Computing
robusta
yolo
coffee beans
title Development of YOLO-Based Mobile Application for Detection of Defect Types in Robusta Coffee Beans
title_full Development of YOLO-Based Mobile Application for Detection of Defect Types in Robusta Coffee Beans
title_fullStr Development of YOLO-Based Mobile Application for Detection of Defect Types in Robusta Coffee Beans
title_full_unstemmed Development of YOLO-Based Mobile Application for Detection of Defect Types in Robusta Coffee Beans
title_short Development of YOLO-Based Mobile Application for Detection of Defect Types in Robusta Coffee Beans
title_sort development of yolo based mobile application for detection of defect types in robusta coffee beans
topic robusta
yolo
coffee beans
url https://jurnal.polibatam.ac.id/index.php/JAIC/article/view/8886
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