Machine Learning Algorithms for Early Detection of Legume Crop Disease

Ok-Hue Cho
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Abstract

Background: Legume crops are an essential component of global agriculture and are widely supplied for human consumption, livestock feed and soil improvement due to their vital nutritional nature. The economic and nutritional significance of legumes is threatened by a multitude of diseases that can cause substantial yield losses. Traditional methods for disease detection, relying on visual inspection, are often subjective and inefficient, leading to delayed intervention. Methods: This study investigates the utilization of machine learning algorithms for the early identification of diseases affecting legume crops. A comprehensive evaluation is conducted on machine learning algorithms, namely Support Vector Machines (SVM) and Convolutional Neural Networks (CNN) with respect to the domain of disease detection. Through a comparative analysis of their performance across different environmental conditions and phases of crop development, this study also explores their strengths and weaknesses. Result: The findings and comparative examination offered significant perspectives on the potential of machine learning algorithms in the realm of early legume crop disease detection. In addition to enhancing crop health and disease management, the research provides support for sustainable agricultural practices and possesses the capacity to augment environmental sustainability and food security through the application of machine learning techniques.
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用于豆科作物病害早期检测的机器学习算法
背景:豆类作物是全球农业的重要组成部分,由于其重要的营养特性,被广泛供应给人类消费、牲畜饲料和土壤改良。豆类作物的经济和营养价值受到多种病害的威胁,这些病害可导致大量减产。传统的病害检测方法依赖目测,往往主观且效率低下,导致干预措施的延误。方法:本研究调查了利用机器学习算法早期识别豆科作物病害的情况。针对病害检测领域,对机器学习算法,即支持向量机(SVM)和卷积神经网络(CNN)进行了全面评估。通过对它们在不同环境条件和作物生长阶段的表现进行比较分析,本研究还探讨了它们的优缺点。研究结果研究结果和对比分析为机器学习算法在豆科作物早期病害检测领域的潜力提供了重要的视角。除了增强作物健康和疾病管理外,这项研究还为可持续农业实践提供了支持,并通过应用机器学习技术增强了环境可持续性和粮食安全。
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