鉴定药用植物及其真菌病害

M. Senanayake, N. M. T. De Silva
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引用次数: 2

摘要

今天,随着科技的发展,大多数手工方法被自动化的计算机系统所取代,以方便人类。植物鉴定和病害分类是两个主要的农业研究领域,重点是引入计算机系统而不是人工方法。由于人为的分类错误会导致风险和高成本,许多研究人员使用了各种基于计算机的识别和分类技术。药用植物鉴定需要专家正确鉴定,因为将有毒植物误认为药用植物会造成致命的病例。此外,将患病的药用植物用于制备药物和草药产品可能具有不利影响。因此,本研究提出了一种用于药用植物识别和病害分类的计算机化方法来克服这一缺点。在这项工作中,通过几个实验对卷积神经网络(CNN)架构和迁移学习进行了比较。迁移学习模型在药用植物识别和药用植物病害分类上的准确率分别达到99.5%和90%,高于CNN架构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Medicinal Plants and Their Fungal Diseases
Today, with the development of technology, most manual methods are replaced by automated computer systems for the easiness of human beings. Plant identification and disease classification are two major agricultural research areas, focusing on introducing computerized systems rather than manual methods. Many researchers used various identification and classification techniques using computer-based systems as human classification errors lead to risk and high cost. Medicinal plant identification needs an expert to correctly identify plants because misidentifying poisonous plants as medicinal plants causes fatal cases. Further, taking diseased medicinal plants to prepare medicines and herbal products may have adverse effects. Therefore, this study proposed a computerized method to identify medicinal plants and classify their diseases to overcome such shortcomings. In this work, a comparison is done with Convolutional Neural Network (CNN) architecture from scratch and Transfer Learning with several experiments. Transfer learning models achieved higher accuracy than CNN architectures for medicinal plant identification with 99.5 % accuracy and medicinal plant disease classification with 90% accuracy, respectively.
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