Metaheuristic optimization based improved neural network for the timely prediction of paddy leaf diseases.

IF 1.4 4区 生物学 Q3 BIOLOGY
G Ponseka, S Sumathi
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引用次数: 0

Abstract

Rice is a fundamental dietary staple that embodies cultural identity, culinary diversity, food security and economic stability, providing a significant portion of daily caloric intake for considerable portion of world populace. However, vulnerability of rice crops to various leaf diseases poses a considerable concern to its productivity and quality, which in turnemphasizes the need for an effective disease prediction technique. This research focuses on prompt detection of pathogenic threats to paddy leaves through image analysis. The inputs are pre-processed using an Adaptive Gabor Filter (AGF), for improving the quality and reducing the noise from the image. Subsequently, using a Histogram of Oriented Gradient (HOG), the extraction of relevant disease-related information is assured. For the classification stage, an OptimizedCapsule Networks (CapsNet) is employed for identifying diseases affecting paddy foliage with high accuracy. The proposed CapsNet achieves improved generalization and robustness by integrating the Glow Worm Swarm Algorithm (GWSA) for parameter optimization. In addition to disease prediction, the proposed system integrates a Fertilizer-Based Disease Management (FBDM) approach, which suggests precise fertilization strategies based on the identified disease. By analysing disease symptoms, the system recommends optimal nutrient applicationssuited to enhance plant resistance and recovery. This integration of disease prediction with precision agriculture techniques enables site-specific fertilizer application, preventing overuse and reducing environmental impact.

基于元启发式优化的改进神经网络水稻叶片病害实时预测。
大米是一种基本的主食,体现了文化特性、烹饪多样性、粮食安全和经济稳定,为世界上相当一部分人口提供了很大一部分每日热量摄入。然而,水稻作物对各种叶片病害的易感性给其产量和质量带来了相当大的问题,这反过来又强调了有效的病害预测技术的必要性。本研究的重点是通过图像分析快速检测水稻叶片的致病威胁。使用自适应Gabor滤波器(AGF)对输入进行预处理,以提高图像质量并减少图像中的噪声。随后,利用定向梯度直方图(Histogram of Oriented Gradient, HOG)提取相关疾病相关信息。在分类阶段,采用优化胶囊网络(CapsNet)对水稻叶片病害进行了高准确率的识别。本文提出的CapsNet通过集成Glow Worm Swarm Algorithm (GWSA)进行参数优化,提高了算法的泛化和鲁棒性。除了疾病预测外,该系统还集成了基于肥料的疾病管理(FBDM)方法,该方法可以根据所识别的疾病提出精确的施肥策略。通过分析病害症状,该系统推荐适合增强植物抗性和恢复的最佳营养施用。这种将疾病预测与精准农业技术相结合的方法可以实现特定地点施肥,防止过度使用并减少对环境的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Theory in Biosciences
Theory in Biosciences 生物-生物学
CiteScore
2.70
自引率
9.10%
发文量
21
审稿时长
3 months
期刊介绍: Theory in Biosciences focuses on new concepts in theoretical biology. It also includes analytical and modelling approaches as well as philosophical and historical issues. Central topics are: Artificial Life; Bioinformatics with a focus on novel methods, phenomena, and interpretations; Bioinspired Modeling; Complexity, Robustness, and Resilience; Embodied Cognition; Evolutionary Biology; Evo-Devo; Game Theoretic Modeling; Genetics; History of Biology; Language Evolution; Mathematical Biology; Origin of Life; Philosophy of Biology; Population Biology; Systems Biology; Theoretical Ecology; Theoretical Molecular Biology; Theoretical Neuroscience & Cognition.
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