Coconut Plant Disease Identified and Management for Agriculture Crops using Machine Learning

Wijethunga C.D, Ishanka K.C, Parindya S.D.N, Priyadarshani T.J.N, Buddika Harshanath, Samantha Rajapaksha
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Abstract

This research paper introduces an innovative approach to improve the quality and sustainability of coconut farming and exports in Sri Lanka. It employs advanced image processing techniques to detect, classify, and grade pests and diseases early in coconut palms. This allows for swift interventions and reduces the need for harsh chemical treatments, promoting eco-friendly farming practices. Furthermore, the study goes beyond pest control to evaluate optimal conditions for coconut growth, considering factors like soil quality, water availability, and climate. It empowers farmers with insights to maximize coconut palm yield. Additionally, the system incorporates a growth prediction component using historical data and machine learning, enabling farmers to plan and allocate resources effectively. By combining early pest detection, pest management, growth classification, and predictive analysis, this research offers a comprehensive strategy to enhance Sri Lanka's coconut quality for export. This approach not only improves product quality but also safeguards the industry's sustainability by reducing economic losses and ecological impact. Leveraging cutting-edge tools like image processing and machine learning, this research aims to boost efficiency, economic viability, and international competitiveness in Sri Lanka's coconut farming sector.
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利用机器学习识别和管理农作物的椰子植物病害
本研究论文介绍了一种提高斯里兰卡椰子种植和出口质量及可持续性的创新方法。它采用先进的图像处理技术,对椰子树的病虫害进行早期检测、分类和分级。这样就可以迅速采取干预措施,减少对苛刻的化学处理的需求,促进生态友好型农业实践。此外,这项研究不仅限于病虫害防治,还考虑到土壤质量、水供应和气候等因素,评估椰子生长的最佳条件。它使农民能够深入了解如何最大限度地提高椰子产量。此外,该系统还利用历史数据和机器学习整合了一个生长预测组件,使农民能够有效地规划和分配资源。通过将早期病虫害检测、病虫害管理、生长分类和预测分析相结合,这项研究为提高斯里兰卡椰子的出口质量提供了一项综合战略。这种方法不仅能提高产品质量,还能减少经济损失和生态影响,从而保障产业的可持续发展。本研究利用图像处理和机器学习等尖端工具,旨在提高斯里兰卡椰子种植业的效率、经济可行性和国际竞争力。
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