Image-Based Plant Disease Detection: A Comparison of Deep Learning and Classical Machine Learning Algorithms

Draško Radovanović, Slobodan Đukanović
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引用次数: 24

Abstract

Rapid human population growth requires corresponding increase in food production. Easily spreadable diseases can have a strong negative impact on plant yields and even destroy whole crops. That is why early disease diagnosis and prevention are of very high importance. Traditional methods rely on lab analysis and human expertise which are usually expensive and unavailable in a large part of the undeveloped world. Since smartphones are becoming increasingly present even in the most rural areas, in recent years scientists have turned to automated image analysis as a way of identifying crop diseases. This paper presents the most recent results in this field, and a comparison of deep learning approach with the classical machine learning algorithms.
基于图像的植物病害检测:深度学习与经典机器学习算法的比较
人口的快速增长要求粮食产量相应增加。容易传播的疾病会对植物产量产生强烈的负面影响,甚至摧毁整株作物。这就是为什么早期疾病诊断和预防非常重要的原因。传统的方法依赖于实验室分析和人类专业知识,而这些方法在大部分不发达国家通常是昂贵的,而且无法获得。由于智能手机越来越多地出现在大多数农村地区,近年来科学家们转向自动图像分析作为识别作物疾病的一种方式。本文介绍了该领域的最新成果,并将深度学习方法与经典机器学习算法进行了比较。
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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