Banana Disease Identification Using Machine Learning Based Technologies and Weather-Based Dispersion Analysis

M. Kothalawala, M.G. Gaveshith K, A.H.D.H. Tharaka, I.A Punchihewa, Disni Sriyaratna
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Abstract

Banana is the fourth most important food crop in the world as well as the most important and popular fruit crop in Sri Lanka. Banana leaf diseases are becoming one of the most important factors affecting agricultural products. As a result of these diseases, the quantity and quality of agricultural produce have drastically decreased. Hence, early detection and classification of banana leaf diseases are becoming more important than ever. But the ancient method of disease identification, visual observation is no longer helpful in this matter as it requires significant knowledge and experience related to banana diseases and symptoms which present farmers severely lacks. Therefore, using ICT-based approaches such as autoML, deep learning, natural language processing and APIs are very important towards the efficiency of the disease identification process and the accuracy of the diagnosis as well as keeping farmers synced with the information related to their plantation such as recent threats and nearby threats.
基于机器学习技术和基于天气的弥散分析的香蕉疾病识别
香蕉是世界上第四重要的粮食作物,也是斯里兰卡最重要和最受欢迎的水果作物。蕉叶病害已成为影响农产品生产的重要因素之一。由于这些疾病,农产品的数量和质量急剧下降。因此,早期发现和分类香蕉叶疾病变得比以往任何时候都更加重要。但是,古老的疾病识别方法,目视观察,在这个问题上不再有帮助,因为它需要大量的香蕉疾病和症状相关的知识和经验,而现在的农民严重缺乏。因此,使用基于信息通信技术的方法,如autoML、深度学习、自然语言处理和api,对于疾病识别过程的效率和诊断的准确性以及使农民与与其种植园相关的信息(如最近的威胁和附近的威胁)保持同步非常重要。
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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