E-ISSN 3041-4180
 

Original Article
Online Published: 01 Apr 2025


Cassava Disease Detection and Classification – A Comparative study of Fuzzy Logic and Traditional Machine Learning

Adnan Shaout, Michael Acquah, Aksheya Kannan Subramanian.


Abstract
Aim/Background:
Plant diseases are a significant threat to global food security, affecting crop yields and economic stability. Early detection and intervention are crucial to mitigating these losses. Currently, AI-driven plant disease detection largely depends on Convolutional Neural Networks (CNNs). However, the necessity for large datasets and substantial computational resources limits their application in resource-constrained environments. This research investigates the potential of fuzzy logic as an alternative approach for detecting and classifying cassava diseases, aiming to address the inherent uncertainty and imprecision in plant disease expression.

Methods:
We developed a fuzzy image processing framework that integrates fuzzy logic-based algorithms to handle variable disease manifestations. By conducting comparative analyses with conventional machine learning techniques, we evaluated the efficacy of the fuzzy logic and hybrid models in terms of accuracy, precision, and computational efficiency.

Results:
The hybrid system achieved an overall accuracy of approximately 92%, noticeably outperforming the non-fuzzy CNN model. The fuzzy logic system demonstrated higher precision and recall in detecting diseases with subtle or variable symptoms, showcasing its ability to effectively manage uncertainty. Overall, the fuzzy logic-integrated system excelled in both accuracy and robustness compared to the non-fuzzy CNN.

Conclusion:
This study led to the development of a prototype application that provides farmers with real-time disease detection capabilities. Our work validates the application of fuzzy logic in agriculture, offering a practical tool for improving cassava disease management.

Key words: Plant Disease Detection; Fuzzy logic; Cassava Disease; Convolutional Neural Networks (CNN); Real Time Detection


 
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How to Cite this Article
Pubmed Style

Shaout A, Acquah M, Subramanian AK. Cassava Disease Detection and Classification – A Comparative study of Fuzzy Logic and Traditional Machine Learning. J Res Agric Food Sci. 2025; 2(2): 110-127. doi:10.5455/JRAFS.20250129080344


Web Style

Shaout A, Acquah M, Subramanian AK. Cassava Disease Detection and Classification – A Comparative study of Fuzzy Logic and Traditional Machine Learning. https://www.jrafs.com/?mno=302657813 [Access: May 02, 2025]. doi:10.5455/JRAFS.20250129080344


AMA (American Medical Association) Style

Shaout A, Acquah M, Subramanian AK. Cassava Disease Detection and Classification – A Comparative study of Fuzzy Logic and Traditional Machine Learning. J Res Agric Food Sci. 2025; 2(2): 110-127. doi:10.5455/JRAFS.20250129080344



Vancouver/ICMJE Style

Shaout A, Acquah M, Subramanian AK. Cassava Disease Detection and Classification – A Comparative study of Fuzzy Logic and Traditional Machine Learning. J Res Agric Food Sci. (2025), [cited May 02, 2025]; 2(2): 110-127. doi:10.5455/JRAFS.20250129080344



Harvard Style

Shaout, A., Acquah, . M. & Subramanian, . A. K. (2025) Cassava Disease Detection and Classification – A Comparative study of Fuzzy Logic and Traditional Machine Learning. J Res Agric Food Sci, 2 (2), 110-127. doi:10.5455/JRAFS.20250129080344



Turabian Style

Shaout, Adnan, Michael Acquah, and Aksheya Kannan Subramanian. 2025. Cassava Disease Detection and Classification – A Comparative study of Fuzzy Logic and Traditional Machine Learning. Journal of Research in Agriculture and Food Sciences, 2 (2), 110-127. doi:10.5455/JRAFS.20250129080344



Chicago Style

Shaout, Adnan, Michael Acquah, and Aksheya Kannan Subramanian. "Cassava Disease Detection and Classification – A Comparative study of Fuzzy Logic and Traditional Machine Learning." Journal of Research in Agriculture and Food Sciences 2 (2025), 110-127. doi:10.5455/JRAFS.20250129080344



MLA (The Modern Language Association) Style

Shaout, Adnan, Michael Acquah, and Aksheya Kannan Subramanian. "Cassava Disease Detection and Classification – A Comparative study of Fuzzy Logic and Traditional Machine Learning." Journal of Research in Agriculture and Food Sciences 2.2 (2025), 110-127. Print. doi:10.5455/JRAFS.20250129080344



APA (American Psychological Association) Style

Shaout, A., Acquah, . M. & Subramanian, . A. K. (2025) Cassava Disease Detection and Classification – A Comparative study of Fuzzy Logic and Traditional Machine Learning. Journal of Research in Agriculture and Food Sciences, 2 (2), 110-127. doi:10.5455/JRAFS.20250129080344