Machine Learning-Based Tea Leaf Disease Detection: A Comprehensive Review
Faruk Ahmed, Md. Taimur Ahad, Yousuf Rayhan Emon

TL;DR
This paper systematically reviews machine learning techniques, including vision transformers and CNNs, for detecting and classifying tea leaf diseases from images, highlighting current progress and future research directions.
Contribution
It provides a comprehensive evaluation of various ML models applied to tea leaf disease detection, including recent transformer-based approaches, and discusses their strengths and limitations.
Findings
ML models effectively classify tea leaf diseases from images
Transformer models show promising accuracy and robustness
The review identifies gaps and future directions in the field
Abstract
Tea leaf diseases are a major challenge to agricultural productivity, with far-reaching implications for yield and quality in the tea industry. The rise of machine learning has enabled the development of innovative approaches to combat these diseases. Early detection and diagnosis are crucial for effective crop management. For predicting tea leaf disease, several automated systems have already been developed using different image processing techniques. This paper delivers a systematic review of the literature on machine learning methodologies applied to diagnose tea leaf disease via image classification. It thoroughly evaluates the strengths and constraints of various Vision Transformer models, including Inception Convolutional Vision Transformer (ICVT), GreenViT, PlantXViT, PlantViT, MSCVT, Transfer Learning Model & Vision Transformer (TLMViT), IterationViT, IEM-ViT. Moreover, this…
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Taxonomy
TopicsSmart Agriculture and AI · Spectroscopy and Chemometric Analyses
Methods+ ( 1 ) ⟷ 888 ⟷ ( 829 ) ⟷ 0881||How do I resolve a dispute on Expedia? · Multi-Head Attention · Attention Is All You Need · Softmax · Dense Connections · Adam · Layer Normalization · Label Smoothing · Vision Transformer · Linear Layer
