Plant Leaf Disease Classification using Deep Learning: A Survey

Deeksha Agarwal, Meenu Chawla, Namita Tiwari
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引用次数: 3

Abstract

With the increase in global population, food supply must be increased correspondingly while simultaneously protecting crops from numerous fatal diseases. Traditionally, plant disease identification was done by naked eyes by using experience-based studies of farmers and plant pathologists. Performing the traditional process is difficult, time-consuming, and offered inaccurate diagnosis at times, resulting in significant economic loss in agribusiness. Later, several studies have employed machine learning in the field of plant disease identification, but the findings were not promising and were too slow for practical use. Recently, Convolution Neural Networks have made an essential breakthrough in the field of computer vision due to their characteristics like automatic feature extraction and leverage effective results with small dataset in a short span of time when compared to machine learning. This paper discusses about the challenges faced in identifying the plant leaf diseases and it tries to solve the problem of inaccurate and time consuming analysis of disease detection and classification by reviewing different methods and state-of-the-art algorithms, which are trying to overcome this issue.
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基于深度学习的植物叶片病害分类研究综述
随着全球人口的增加,粮食供应必须相应增加,同时保护作物免受许多致命疾病的侵害。传统上,植物病害鉴定是通过农民和植物病理学家基于经验的研究通过肉眼完成的。执行传统的过程是困难的,耗时的,有时提供不准确的诊断,导致农业综合企业重大的经济损失。后来,有几项研究将机器学习应用于植物病害鉴定领域,但结果并不乐观,而且速度太慢,无法实际应用。近年来,卷积神经网络在计算机视觉领域取得了重大突破,与机器学习相比,卷积神经网络具有自动特征提取、在短时间内利用小数据集获得有效结果等特点。本文讨论了植物叶片病害识别所面临的挑战,并试图通过回顾不同的方法和最新的算法来解决疾病检测和分类分析不准确和耗时的问题。
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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