深度学习方法在苹果叶片交替侵染病识别中的发展:综述

IF 7.7 1区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY Computers and Electronics in Agriculture Pub Date : 2024-11-11 DOI:10.1016/j.compag.2024.109593
Mansoor Ahmad Kirmani, Yasir Afaq
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引用次数: 0

摘要

苹果树叶部病害(ATLDs)可以准确识别并及早解决,以防止病害蔓延,最大限度地减少对化学农药和化肥的需求,提高苹果质量和产量,保护苹果品种的健康生长。为了克服这些挑战,人们开发了不同的深度学习(DL)方法来早期检测苹果叶片病害。本文分析了 2010 年至 2024 年的数据,发现许多研究人员利用不同类型的数据集进行疾病检测。此外,深度学习(DL)和机器学习(ML)也被广泛应用于苹果叶片白粉病的检测和识别。从以往的工作中还可以看出,支持向量机(SVM)、随机森林(RF)、XGBoost 等是研究人员最常用的方法。另一方面,DenseNet、MobileNet、卷积神经网络(CNN)和 Vision Transformer 是研究人员使用的深度学习方法。此外,我们还对每种方法进行了简要分析和比较分析,如轻量级 CNN 和基于注意力的机制、迁移学习(TL)、定位技术、视觉转换器(ViT)和严重性估计技术。研究强调了它们的方法、数据集、性能指标和实际应用。本研究探讨了拟议模型的方法、特征选择和提取技术、数据捕获条件、准确性、实验中使用的数据集类型及其资源。我们的研究结果表明,尽管 DL 方法在改善农业病害管理方面具有巨大潜力,但在农业病害管理方面还存在许多问题。但亟需一种更具可扩展性、稳健性和灵活性的解决方案来处理众多农业条件和复杂的疾病。通过有条不紊地全面分析收集到的数据,本研究旨在为旨在设计、开发和实施基于 DL 的苹果叶病检测和识别系统的研究人员提供宝贵的资源,最终为可持续农业和提高粮食安全做出贡献。
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Developments in deep learning approaches for apple leaf Alternaria disease identification: A review
Apple tree leaf diseases (ATLDs) can be accurately identified and addressed early to prevent the diseases from spreading, minimize the need for chemical pesticides and fertilizers, increase apple quality and production, and preserve the healthy growth of apple varieties. To overcome such challenges, different Deep Learning (DL) approaches have been developed to early detect apple leaf diseases. In this paper, the data from 2010 to 2024 has been taken for analysis, and it has been observed that many of the researchers have utilized different types of datasets for disease detection. Moreover, Deep Learning (DL) and Machine Learning (ML) have been mostly utilized for the detection and identification of apple leaf Alternaria diseases. It has also been observed from the previous work that Support Vector Machines (SVM), Random Forests (RF), XGBoost, and many more are the most common approaches utilized by the researchers. On the other hand, DenseNet, MobileNet, Convolutional Neural Network (CNN), and Vision Transformer are the deep learning approaches utilized by the researchers. Furthermore, we have also given a brief analysis of each approach along with a comparative analysis such as lightweight CNNs and Attention-based mechanisms, Transfer Learning (TL), Localization techniques, Vision Transformer (ViT), and Severity estimation techniques. Emphasizing their methods, datasets, performance metrics, and real-world applications. This study explores the proposed models’ approaches, feature selection and extraction techniques, data capturing conditions, accuracy, types of datasets used in the experiments, and their resources. Our research findings indicate that although DL approaches have significant potential for improving disease management in agriculture. There is a crucial need for a more scalable, robust, and flexible solution to handle numerous agricultural conditions and disease complexities. By methodically and comprehensively analyzing the collected data, this study aims to facilitate valuable resources for researchers aiming to design, develop, and implement DL-based systems for apple leaf disease detection and identification, ultimately contributing to sustainable agriculture and improved food security.
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来源期刊
Computers and Electronics in Agriculture
Computers and Electronics in Agriculture 工程技术-计算机:跨学科应用
CiteScore
15.30
自引率
14.50%
发文量
800
审稿时长
62 days
期刊介绍: Computers and Electronics in Agriculture provides international coverage of advancements in computer hardware, software, electronic instrumentation, and control systems applied to agricultural challenges. Encompassing agronomy, horticulture, forestry, aquaculture, and animal farming, the journal publishes original papers, reviews, and applications notes. It explores the use of computers and electronics in plant or animal agricultural production, covering topics like agricultural soils, water, pests, controlled environments, and waste. The scope extends to on-farm post-harvest operations and relevant technologies, including artificial intelligence, sensors, machine vision, robotics, networking, and simulation modeling. Its companion journal, Smart Agricultural Technology, continues the focus on smart applications in production agriculture.
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