An Empirical Survey of Machine Learning Based Plant Disease Prediction Models

Smita Sankhe, Dr. Guddi Singh
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Abstract

The occurrence of diseases in plants badly impacts the agricultural production, which increases the food insecurity when the diseases are left undetected. Particularly important for ensuring the availability of production of agricultural and food are the major crops, such as maize, rice, and others. Effective control and prevention of diseases in plants are based on disease forecasting and early warning, which is essential for managing and making decisions regarding agricultural productivity. In rural parts of developing nations, observations by knowledgeable providers remain the main method for plant disease identification as of yet. This draws researchers in for ongoing experienced monitoring, which may be cost-prohibitive on large farms. Besides, in some remote areas, farmers require the assistance of the agricultural experts, which is the expensive and time-consuming process. Hence, automatic disease identification for plants is important to promote the monitoring of large crop fields, which encourages the contribution of the accurate, less-expensive, automatic, and fast technique to perform the detection of diseases in plants. In this survey, the automatic detection methods used for the plant disease detection based on the deep learning methods are discussed. The importance of the deep learning methods for the detection of disease is demonstrated through the schematic sketch on the other basic machine learning techniques in agricultural applications.
基于机器学习的植物病害预测模型的实证研究
植物病害的发生严重影响了农业生产,当病害未被发现时,增加了粮食不安全。对确保农业和粮食生产的可获得性特别重要的是主要作物,如玉米、水稻和其他作物。有效控制和预防植物疾病的基础是疾病预测和预警,这对于管理和作出有关农业生产力的决策至关重要。在发展中国家的农村地区,迄今为止,由知识渊博的提供者进行观察仍然是鉴定植物病害的主要方法。这吸引了研究人员进行持续的有经验的监测,这在大型农场可能成本过高。此外,在一些偏远地区,农民需要农业专家的帮助,这是一个昂贵和耗时的过程。因此,植物病害自动识别对于促进大面积作物的监测具有重要意义,这鼓励了准确、廉价、自动化和快速的植物病害检测技术的贡献。本文讨论了基于深度学习方法的植物病害自动检测方法。通过农业应用中其他基本机器学习技术的示意图,展示了深度学习方法对疾病检测的重要性。
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