Mam-App: A Novel Parameter-Efficient Mamba Model for Apple Leaf Disease Classification
Md Nadim Mahamood, Md Imran Hasan, Md Rasheduzzaman, Ausrukona Ray, Md Shafi Ud Doula, Kamrul Hasan

TL;DR
This paper introduces Mam-App, a highly parameter-efficient deep learning model based on Mamba architecture, achieving state-of-the-art accuracy in apple leaf disease classification while being suitable for resource-constrained devices.
Contribution
The paper presents Mam-App, a novel lightweight Mamba-based model that balances efficiency and performance for plant disease classification tasks.
Findings
Achieves 99.58% accuracy on apple leaf dataset with only 0.051M parameters.
Demonstrates robustness across corn and potato leaf disease datasets.
Suitable for deployment on low-resource platforms like mobile devices.
Abstract
The rapid growth of the global population, alongside exponential technological advancement, has intensified the demand for food production. Meeting this demand depends not only on increasing agricultural yield but also on minimizing food loss caused by crop diseases. Diseases account for a substantial portion of apple production losses, despite apples being among the most widely produced and nutritionally valuable fruits worldwide. Previous studies have employed machine learning techniques for feature extraction and early diagnosis of apple leaf diseases, and more recently, deep learning-based models have shown remarkable performance in disease recognition. However, most state-of-the-art deep learning models are highly parameter-intensive, resulting in increased training and inference time. Although lightweight models are more suitable for user-friendly and resource-constrained…
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Taxonomy
TopicsSmart Agriculture and AI · Plant Disease Management Techniques · Plant Physiology and Cultivation Studies
