叶片病害检测的深度学习模型性能评价:比较研究

Wajahat Akbar, A. Soomro, M. Ullah, Muhammad Inam Ul Haq, Sana Ullah Khan, Tahir Ali Shah
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引用次数: 1

摘要

在植物生长受到影响之前及早发现病害是至关重要的。过去,植物病害已经使用各种机器学习(ML)模型进行检测和分类。深度学习(DL)在提高准确性方面似乎具有巨大的潜力;然而,在农业应用中,卷积神经网络(CNN)已被研究人员广泛使用。cnn在识别植物种类、管理产量、检测杂草、管理土壤和水、计算果实、检测病虫害和评估植物营养状况方面非常有效。农民可以使用自动疾病检测系统快速准确地诊断植物疾病。为了加快作物诊断,植物叶片病害检测系统必须实现自动化。本文在一个新的植物病害数据集上对12种不同的模型进行了评估,结果表明,最准确的模型是Densenet169。训练和验证准确率分别为97.2%和97.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Evaluation of Deep Learning Models for Leaf Disease Detection: A Comparative Study
Early detection of plant diseases is crucial before plant growth is affected. Plant diseases have been detected and classified using a variety of machine learning (ML) models in the past. Deep Learning (DL) appears to have great potential in terms of increased accuracy; however, in agricultural applications of Convolutional Neural Networks (CNN) has widely been utilised by researchers. CNNs are so effective at identifying plant species, managing yields, detecting weeds, managing soil, and water, counting fruits, detecting diseases and pests, and evaluating plant nutrient status. A farmer can diagnose plant diseases quickly and accurately with an automated disease detection system. To speed up crop diagnosis, plant leaf disease detection systems must be automated. In this paper, we evaluated twelve different models on a new plant diseases dataset and demonstrated that the most accurate model was Densenet169. In training and validation, the accuracy was 97.2% and 97.8%, respectively.
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