Cassava Leaf Disease Identification and Detection Using Deep Learning Approach

J. Anitha, N. Saranya
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引用次数: 8

Abstract

Agriculture is the primary source of livelihood for about 60% of the world's total population according to the Food and Agricultural Organization (FAO). The economy of the developing countries is solely dependent on agriculture commodities. As the world population is increasing at faster pace, the demand for food is also escalating tremendously. In recent days, agriculture is experiencing an automation revolution. Hence the introduction of disruptive technologies like Artificial Intelligence plays a major role in increasing agricultural productivity. AI enabled approaches would help in overcoming the traditional challenges faced in agriculture practices, by automating various agriculture related tasks. Nowadays, farmers adopt precision farming which uses AI techniques namely in crop health monitoring, weed detection, plant disease identification and detection, and forecast weather, commodity prices to increase the yield. As there is scarcity of manpower in agriculture sector, AI based equipment like bots and drones are used widely. Crop diseases are a major threat to food security and the manual identification of the diseases with the help of experts will incur more cost and time, especially for larger farms. The machine-vision based techniques provide image based automatic process control, inspection, and robot guidance for pest and disease control. It provides automated process in agriculture, paving way for improved efficiency and profitability. Various factors contribute for plant diseases, which includes soil health, climatic conditions, species and pests. The proposed chapter elaborates on the use of deep learning techniques in the leaf disease detection of Cassava plants. The chapter initially describes the evolution of various neural network techniques used in classification and prediction. It describes the significance of using Convolutional Neural Network (CNN) over deep neural networks. The chapter focuses on classification of leaf disease in Cassava plants using images acquired real time and from Kaggle dataset. In the final part of the chapter, the results of the models with original and augmented data were illustrated considering accuracy as performance metric.
基于深度学习方法的木薯叶病识别与检测
根据粮食及农业组织(粮农组织)的数据,农业是世界总人口约60%的主要生计来源。发展中国家的经济完全依赖农产品。随着世界人口以更快的速度增长,对粮食的需求也在急剧上升。最近,农业正在经历一场自动化革命。因此,人工智能等颠覆性技术的引入在提高农业生产力方面发挥了重要作用。通过自动化各种与农业相关的任务,人工智能支持的方法将有助于克服农业实践中面临的传统挑战。如今,农民采用人工智能技术进行精准农业,即作物健康监测、杂草检测、植物病害识别和检测、天气预报、商品价格预测,以提高产量。由于农业部门人力短缺,机器人和无人机等基于人工智能的设备被广泛使用。作物病害是对粮食安全的主要威胁,在专家的帮助下人工识别病害将花费更多的成本和时间,特别是对大型农场而言。基于机器视觉的技术为病虫害控制提供了基于图像的自动过程控制、检测和机器人指导。它为农业提供了自动化流程,为提高效率和盈利能力铺平了道路。造成植物病害的因素多种多样,包括土壤健康、气候条件、物种和害虫。这一章详细阐述了深度学习技术在木薯植物叶片病害检测中的应用。本章首先描述了用于分类和预测的各种神经网络技术的发展。它描述了在深度神经网络上使用卷积神经网络(CNN)的意义。本章重点介绍了利用Kaggle数据集实时获取的图像对木薯叶片病害进行分类。在本章的最后一部分,以精度为性能指标,说明了具有原始数据和增强数据的模型的结果。
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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