应用人工智能方法检测粉虱病

B. Aksoy, Nergiz Aydin, Sema Çayir, O. Salman
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引用次数: 0

摘要

今天,由于人口密度的增加,对农业用地的需求增加得更多。因此,提高农业区农作物的产量成为一项非常重要的需求。尽量减少对农业地区植物生产力产生负面影响的有害生物是非常重要的。在这项研究中,旨在通过人工智能方法检测对农业地区植物生产力产生负面影响的粉蚧病。使用了从开放获取网站收集的539张有病和无病植物图像。这些图像通过VGG-16、Resnet-34和Squeezenet深度学习算法进行分类。三种架构中最成功的是VGG-16和ResNet-34模型,准确率为97%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Mealy Lice Disease Using Artificial Intelligence Methods
Today, the need for agricultural lands has increased even more due to the increasing population density. For this reason, increasing the yield of crops in agricultural areas becomes a very important need. It is very important to minimize the pests that negatively affect plant productivity in agricultural areas. In the study, it was aimed to detect the mealybug disease, which negatively affects plant productivity in agricultural areas, by using artificial intelligence methods. 539 disease-bearing and disease-free plant images collected from open access websites were used. These images are classified by VGG-16, Resnet-34 and Squeezenet deep learning algorithms. The most successful among the three architectures was determined as the VGG-16 and ResNet-34 model with an accuracy rate of 97%.
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