Tiny-ViT: A Compact Vision Transformer for Efficient and Explainable Potato Leaf Disease Classification
Shakil Mia, Umme Habiba, Urmi Akter, SK Rezwana Quadir Raisa, Jeba Maliha, Md. Iqbal Hossain, Md. Shakhauat Hossan Sumon

TL;DR
Tiny-ViT is a compact, efficient, and explainable Vision Transformer model designed for accurate potato leaf disease classification in resource-limited settings, outperforming baseline models.
Contribution
Introduces Tiny-ViT, a small and effective Vision Transformer tailored for resource-constrained environments, with high accuracy and interpretability for plant disease detection.
Findings
Achieved 99.85% test accuracy on potato leaf disease dataset.
Outperformed baseline models like DEIT Small, SWIN Tiny, and MobileViT XS.
Demonstrated high reliability with MCC of 0.9990 and low computational costs.
Abstract
Early and precise identification of plant diseases, especially in potato crops is important to ensure the health of the crops and ensure the maximum yield . Potato leaf diseases, such as Early Blight and Late Blight, pose significant challenges to farmers, often resulting in yield losses and increased pesticide use. Traditional methods of detection are not only time-consuming, but are also subject to human error, which is why automated and efficient methods are required. The paper introduces a new method of potato leaf disease classification Tiny-ViT model, which is a small and effective Vision Transformer (ViT) developed to be used in resource-limited systems. The model is tested on a dataset of three classes, namely Early Blight, Late Blight, and Healthy leaves, and the preprocessing procedures include resizing, CLAHE, and Gaussian blur to improve the quality of the image. Tiny-ViT…
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