基于深度学习的水稻植物病害自动检测与分类强化优化技术

IF 4 2区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY Food and Energy Security Pub Date : 2024-09-25 DOI:10.1002/fes3.70001
P. Preethi, R. Swathika, S. Kaliraj, R. Premkumar, J. Yogapriya
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引用次数: 0

摘要

要确保全球粮食安全,就必须采用创新解决方案,对水稻等主要作物的病害进行早期检测和精确分类。本研究通过整合深度学习和元启发式优化技术,介绍了一种先进的水稻植物病害自动检测和分类方法。具体来说,深度密集神经网络(DNN)可捕捉图像中的复杂模式,而极端学习机(ELM)则可进行分类。为了增强优化过程,引入了一种创新的变体算法,即人工洗牌牧羊人优化算法(SSO),又称增强型人工洗牌牧羊人优化算法(EASSO)。EASSO 融合了自适应策略和增强的探索-开发机制,从而在 DNN 的训练过程中实现更高效的收敛。该系统通过 DNN 处理水稻植株的高分辨率图像,提取表明各种病害(包括稻瘟病、细菌性枯萎病和褐斑病)的细微特征。EASSO 可优化 DNN 的参数,最大限度地提高其病害分类的准确性。DNN 和 EASSO 之间的协同作用确保了模型的稳健性和适应性,能够处理各种复杂的病害模式。这种自动化方法大大减少了对人工检测的依赖,从而能够及时干预并提高整体农业生产率。实验结果表明,与传统方法相比,DNN-EASSO 框架具有更高的准确率和更快的收敛速度。增强型人工洗牌牧羊人优化技术的应用提高了疾病分类的精确度和可靠性,使这一集成系统成为农民和农业从业人员的宝贵工具。这项研究是向可持续农业迈出的重要一步,展示了先进技术在确保全球粮食安全方面的潜力。
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Deep Learning–Based Enhanced Optimization for Automated Rice Plant Disease Detection and Classification

Ensuring global food security necessitates innovative solutions for early detection and precise classification of diseases in staple crops like rice. This study introduces an advanced approach for automated rice plant disease detection and classification by integrating deep learning and metaheuristic optimization techniques. Specifically, a deep dense neural network (DNN) is employed for its capacity to capture intricate patterns in images and extreme learning machine (ELM) for classification. To enhance the optimization process, an innovative variant of the Shuffled Shepherd Optimization (SSO) algorithm, known as Enhanced Artificial Shuffled Shepherd Optimization (EASSO), is introduced. EASSO incorporates adaptive strategies and enhanced exploration–exploitation mechanisms, enabling more efficient convergence during the training of the DNN. The proposed system operates by processing high-resolution images of rice plants through the DNN, extracting nuanced features indicative of various diseases, including blast, bacterial blight, and brown spots. EASSO optimizes the DNN's parameters, maximizing its accuracy in disease classification. The synergy between DNN and EASSO ensures a robust and adaptive model capable of handling diverse and complex disease patterns. This automated approach significantly reduces the reliance on manual inspection, enabling timely intervention and improving overall agricultural productivity. Experimental results demonstrate the superiority of the DNN-EASSO framework over traditional methods, showcasing higher accuracy rates and faster convergence. The incorporation of Enhanced Artificial Shuffled Shepherd Optimization enhances the precision and reliability of disease classification, making this integrated system a valuable tool for farmers and agricultural practitioners. This research represents a significant stride toward sustainable agriculture, showcasing the potential of advanced technologies in ensuring food security worldwide.

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来源期刊
Food and Energy Security
Food and Energy Security Energy-Renewable Energy, Sustainability and the Environment
CiteScore
9.30
自引率
4.00%
发文量
76
审稿时长
19 weeks
期刊介绍: Food and Energy Security seeks to publish high quality and high impact original research on agricultural crop and forest productivity to improve food and energy security. It actively seeks submissions from emerging countries with expanding agricultural research communities. Papers from China, other parts of Asia, India and South America are particularly welcome. The Editorial Board, headed by Editor-in-Chief Professor Martin Parry, is determined to make FES the leading publication in its sector and will be aiming for a top-ranking impact factor. Primary research articles should report hypothesis driven investigations that provide new insights into mechanisms and processes that determine productivity and properties for exploitation. Review articles are welcome but they must be critical in approach and provide particularly novel and far reaching insights. Food and Energy Security offers authors a forum for the discussion of the most important advances in this field and promotes an integrative approach of scientific disciplines. Papers must contribute substantially to the advancement of knowledge. Examples of areas covered in Food and Energy Security include: • Agronomy • Biotechnological Approaches • Breeding & Genetics • Climate Change • Quality and Composition • Food Crops and Bioenergy Feedstocks • Developmental, Physiology and Biochemistry • Functional Genomics • Molecular Biology • Pest and Disease Management • Post Harvest Biology • Soil Science • Systems Biology
期刊最新文献
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