Plant Disease Detection Techniques based on Deep Learning Models: A Review

Onkar Saxena, Shikha Agrawal, S. Silakari
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Abstract

Plants must be checked at an early stage of their life cycle in order to avoid illnesses. Visual observation, which takes longer, and costly expertise are the conventional approach utilised for this monitoring. Therefore, illness detection systems need to be automated in order to speed up this procedure. This study analyses the possibility of technologies for the identification of pest leaf diseases in plants to support agricultural growth. It covers many processes, such as image retrieval, image segmentation, extraction of features and classification. Two key phases comprise plant disease detection technology: segmentation of an open input to detect the ill portion and an extraction approach to extract the image feature and classify the functionality that is removed using different classifiers. The technology consists of two important steps. In this study, segmentation, characteristic removal, and classification approaches are examined and clarified from the perspective of different parameters.
基于深度学习模型的植物病害检测技术综述
为了避免疾病,植物必须在其生命周期的早期阶段进行检查。目视观察需要更长的时间,并且需要昂贵的专业知识,这是用于这种监测的传统方法。因此,疾病检测系统需要实现自动化,以加快这一过程。本研究分析了植物病虫害鉴定技术的可能性,以支持农业生产。它涵盖了图像检索、图像分割、特征提取和分类等多个过程。植物病害检测技术包括两个关键阶段:对开放输入进行分割以检测病害部分,以及提取图像特征并对使用不同分类器去除的功能进行分类的提取方法。这项技术包括两个重要步骤。在本研究中,从不同参数的角度对分割、特征去除和分类方法进行了研究和阐明。
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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