一种用于香蕉叶片病害图像分类的CNN架构的设计与实现

Eduardo Correa, Melannie García, Gustavo Grosso, José Huamantoma, W. Ipanaqué
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引用次数: 5

摘要

皮乌拉是一个农业区,因此,农作物生产是主要的收入来源之一。近年来,这一领域的竞争日益激烈,Piura也不能落在后面。由于疾病、虫害和气候条件的突然变化等因素,作物产量下降。植物病害的自动识别对于在生长阶段自动发现病害症状至关重要。本文提出了一种利用数字图像处理技术分析和检测香蕉叶病害的方法。结果表明,该系统能够成功地检测和分类两种主要的香蕉叶病:黑叶斑病(BBS)和细菌性枯萎病(BBW)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Implementation of a CNN architecture to classify images of banana leaves with diseases
Piura is an agricultural region, and therefore, crop production is one of the primary sources of income. Competition in this sector has been growing in recent years, and Piura cannot be left behind. Due to factors such as diseases, pest attacks, and sudden changes in climatic conditions, the level of crop production decreases. Automatic recognition of plant diseases is essential to automatically detect disease symptoms as soon as they appear in the growing stage. This paper provides a proposed methodology for the analysis and detection of banana leaf diseases using digital image processing techniques. The results obtained show that the proposed system can successfully detect and classify two major banana leaf diseases: Black Sigatoka (BBS) and Bacterial Wilt (BBW).
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