探索自动检测作物病害的机器学习方法

IF 5.4 Q1 PLANT SCIENCES
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引用次数: 0

摘要

在气候条件频繁变化、世界人口不断增加的时代,确保粮食安全已成为当务之急。生物胁迫对作物产量构成严重威胁,因此必须及早准确地检测植物病害。传统方法完全依赖于人类的专业知识,往往需要大量人力、耗费大量时间,而且容易出错。机器学习(ML)的最新进展为我们提供了前景广阔的替代方法,可实现高精度、高效率的病害自动检测过程。我们全面分析了各种 ML 技术,包括卷积神经网络 (CNN)、循环神经网络 (RNN)、支持向量机 (SVM)、随机森林 (RF) 以及 ResNet 和 Inception 等深度学习架构,重点介绍了它们的方法、数据集、性能指标和实际应用。本系统综述在对过去五年的最新文献资源进行文本挖掘后,进行了全面分析。综述讨论了提出的模型、技术、准确性、特征选择、提取方法、用于执行实验的数据集类型以及数据集的来源。此外,本综述还根据现有模型的局限性和差距对其进行了批判性分析。我们的研究结果表明,虽然基于 ML 的方法在加强农业病害管理方面展现出巨大潜力,但仍迫切需要更强大、可扩展和适应性更强的解决方案,以应对不同的农业条件和病害复杂性。通过系统分析提取的数据,本综述希望为旨在开发和实施基于 ML 的作物疾病检测系统的研究人员和从业人员提供宝贵的资源,从而为可持续农业和加强粮食安全做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploration of machine learning approaches for automated crop disease detection

In the era of frequently changing climatic conditions along with ever increasing world population, it becomes imperative to ensure food security. The burden of biotic stresses pose serious threat to crop productivity, therefore, early and accurate detection of plant diseases is essential. Conventional methods exclusively rely on human expertise, and are often labor-intensive, time-consuming, and prone to errors. Recent advancements in machine learning (ML) offer promising alternatives by automating the disease detection processes with high precision and efficiency. We comprehensively analyze various ML techniques, including Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Support Vector Machines (SVMs), Random Forest (RF), and Deep Learning Architectures like ResNet and Inception, among others, highlighting their methodologies, datasets, performance metrics, and real-world applications. This systematic review provides a comprehensive analysis after text mining the most recent literature resources of the last half a decade. The review discusses the proposed models, techniques, accuracy, feature selection, extraction methods, the types of datasets used to perform experiments, and the sources of the datasets. Additionally, this review provides critical analyses of existing models in the context of their limitations and gaps. Our findings suggest that while ML based methods demonstrate substantial potential for enhancing agricultural disease management, there is a urgent need for more robust, scalable, and adaptable solutions to address diverse agricultural conditions and disease complexities. By systematically analyzing the extracted data, this review aspires to provide a valuable resource for researchers and practitioners aiming to develop and implement ML-based systems for crop disease detection, thereby contributing to sustainable agriculture and enhancing food security.

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来源期刊
Current Plant Biology
Current Plant Biology Agricultural and Biological Sciences-Plant Science
CiteScore
10.90
自引率
1.90%
发文量
32
审稿时长
50 days
期刊介绍: Current Plant Biology aims to acknowledge and encourage interdisciplinary research in fundamental plant sciences with scope to address crop improvement, biodiversity, nutrition and human health. It publishes review articles, original research papers, method papers and short articles in plant research fields, such as systems biology, cell biology, genetics, epigenetics, mathematical modeling, signal transduction, plant-microbe interactions, synthetic biology, developmental biology, biochemistry, molecular biology, physiology, biotechnologies, bioinformatics and plant genomic resources.
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