Deep Learning-Based Surveillance System for Coconut Disease and Pest Infestation Identification

S. Vidhanaarachchi, P. Akalanka, R. Gunasekara, H. M. U. D. Rajapaksha, N. S. Aratchige, Dilani Lunugalage, J. Wijekoon
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引用次数: 10

Abstract

The coconut industry which contributes 0.8% to the national GDP is severely affected by diseases and pests. Weligama coconut leaf wilt disease and coconut caterpillar infestation are the most devastating; hence early detection is essential to facilitate control measures. Management strategies must reach approximately 1.1 million coconut growers with a wide range of demographics. This paper reports a smart solution that assists the stakeholders by detecting and classifying the disease, infestation, and deficiency for the sustainable development of the coconut industry. It leads to the early detections and makes stakeholders aware about the dispersions to take necessary control measures to save the coconut lands from the devastation. The results obtained from the proposed method for the identifications of disease, pest, deficiency, and degree of diseased conditions are in the range of 88% - 97% based on the performance evaluations.
基于深度学习的椰子病虫害识别监测系统
占国民生产总值0.8%的椰子产业受到病虫害的严重影响。椰叶枯萎病和椰毛虫侵染最具破坏性;因此,早期发现对于促进控制措施至关重要。管理战略必须覆盖大约110万椰子种植者,人口分布广泛。本文报告了一种智能解决方案,通过检测和分类椰子产业可持续发展的疾病、虫害和缺陷,帮助利益相关者。它导致早期发现,并使利益相关者意识到分散采取必要的控制措施,以拯救椰子地免受破坏。根据性能评价,所提出的方法对病虫害、缺陷和患病程度的识别结果在88% - 97%之间。
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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