Revolutionizing Coffee Farming: A Mobile App with GPS-Enabled Reporting for Rapid and Accurate On-Site Detection of Coffee Leaf Diseases Using Integrated Deep Learning

Author:

Hitimana Eric1ORCID,Kuradusenge Martin1ORCID,Sinayobye Omar Janvier1ORCID,Ufitinema Chrysostome2,Mukamugema Jane2,Murangira Theoneste3,Masabo Emmanuel1,Rwibasira Peter2ORCID,Ingabire Diane Aimee1,Niyonzima Simplice1,Bajpai Gaurav4,Mvuyekure Simon Martin5,Ngabonziza Jackson6

Affiliation:

1. Department of Computer and Software Engineering, University of Rwanda, Kigali P.O. Box 3900, Rwanda

2. Department of Biology, University of Rwanda, Kigali P.O. Box 3900, Rwanda

3. Department of Computer Science, University of Rwanda, Kigali P.O. Box 2285, Rwanda

4. Directorate of Grants and Partnerships, Kampala International University, Kansanga, Kampala P.O. Box 20000, Uganda

5. Crop Innovation and Technology Transfer, Traditional Export Crops Programme, Rwanda Agriculture Board, Kigali P.O. Box 5016, Rwanda

6. Bank of Kigali Plc, Kigali P.O. Box 175, Rwanda

Abstract

Coffee leaf diseases are a significant challenge for coffee cultivation. They can reduce yields, impact bean quality, and necessitate costly disease management efforts. Manual monitoring is labor-intensive and time-consuming. This research introduces a pioneering mobile application equipped with global positioning system (GPS)-enabled reporting capabilities for on-site coffee leaf disease detection. The application integrates advanced deep learning (DL) techniques to empower farmers and agronomists with a rapid and accurate tool for identifying and managing coffee plant health. Leveraging the ubiquity of mobile devices, the app enables users to capture high-resolution images of coffee leaves directly in the field. These images are then processed in real-time using a pre-trained DL model optimized for efficient disease classification. Five models, Xception, ResNet50, Inception-v3, VGG16, and DenseNet, were experimented with on the dataset. All models showed promising performance; however, DenseNet proved to have high scores on all four-leaf classes with a training accuracy of 99.57%. The inclusion of GPS functionality allows precise geotagging of each captured image, providing valuable location-specific information. Through extensive experimentation and validation, the app demonstrates impressive accuracy rates in disease classification. The results indicate the potential of this technology to revolutionize coffee farming practices, leading to improved crop yield and overall plant health.

Funder

University of Rwanda

Publisher

MDPI AG

Reference54 articles.

1. (2023, October 20). UNCTAD. Available online: http://creativecommons.org/licenses/by/3.0/igo/.

2. Factors affecting coffee (Coffea arabica L.) quality in Ethiopia: A review;Belay;J. Multidiscip. Sci. Res.,2016

3. Increasing Agri-Export (2023, October 21). NAEB Strategic Plan, Kigali, Available online: https://naeb.gov.rw/fileadmin/documents/191126NAEBStrategy2019-2024_FINAL.pdf.

4. Behuria, P. (2018). The Politics of Upgrading in Global Value Chains: The Case of Rwanda’s Coffee Sector October 2018, The University of Manchester. ESID Working Paper No. 108.

5. Waller, J.M. (1985). Coffee, Springer.

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