Machine Learning-Based Jamun Leaf Disease Detection: A Comprehensive Review

ArXiv Pub Date : 2023-11-27 DOI:10.48550/arXiv.2311.15741
Auvick Chandra Bhowmik, Md. Taimur Ahad, Yousuf Rayhan Emon
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Abstract

Jamun leaf diseases pose a significant threat to agricultural productivity, negatively impacting both yield and quality in the jamun industry. The advent of machine learning has opened up new avenues for tackling these diseases effectively. Early detection and diagnosis are essential for successful crop management. While no automated systems have yet been developed specifically for jamun leaf disease detection, various automated systems have been implemented for similar types of disease detection using image processing techniques. This paper presents a comprehensive review of machine learning methodologies employed for diagnosing plant leaf diseases through image classification, which can be adapted for jamun leaf disease detection. It meticulously assesses the strengths and limitations of various Vision Transformer models, including Transfer learning model and vision transformer (TLMViT), SLViT, SE-ViT, IterationViT, Tiny-LeViT, IEM-ViT, GreenViT, and PMViT. Additionally, the paper reviews models such as Dense Convolutional Network (DenseNet), Residual Neural Network (ResNet)-50V2, EfficientNet, Ensemble model, Convolutional Neural Network (CNN), and Locally Reversible Transformer. These machine-learning models have been evaluated on various datasets, demonstrating their real-world applicability. This review not only sheds light on current advancements in the field but also provides valuable insights for future research directions in machine learning-based jamun leaf disease detection and classification.
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基于机器学习的果农叶片病害检测:综合评述
果酱叶部病害对农业生产力构成重大威胁,对果酱行业的产量和质量都有负面影响。机器学习的出现为有效解决这些病害开辟了新途径。早期检测和诊断对于成功的作物管理至关重要。虽然目前尚未开发出专门用于果树叶片病害检测的自动化系统,但已有各种自动化系统利用图像处理技术实现了类似类型的病害检测。本文全面回顾了通过图像分类诊断植物叶片病害的机器学习方法,这些方法可用于果树叶片病害检测。它细致评估了各种视觉转换器模型的优势和局限性,包括转移学习模型和视觉转换器(TLMViT)、SLViT、SE-ViT、IterationViT、Tiny-LeViT、IEM-ViT、GreenViT 和 PMViT。此外,论文还评述了密集卷积网络(DenseNet)、残差神经网络(ResNet)-50V2、EfficientNet、集合模型、卷积神经网络(CNN)和局部可逆变换器等模型。这些机器学习模型已在各种数据集上进行了评估,证明了它们在现实世界中的适用性。这篇综述不仅揭示了该领域的当前进展,还为基于机器学习的果树叶病检测和分类的未来研究方向提供了宝贵的见解。
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