SunNet:一种检测向日葵病害的深度学习方法

Taslima Akter Sathi, Md Abid Hasan, M. J. Alam
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引用次数: 0

摘要

向日葵(Helianthus annuus),通常被称为向日葵,是一种只受干旱轻微影响的作物。农业经济部门从中受益匪浅。然而,各种疾病已经使世界各地的向日葵种植陷入停顿。然而,如果不及早采取纠正措施,许多严重的病害将影响植物。因此,它将对向日葵的产量、数量和质量产生负面影响。手工诊断疾病可能是一个耗时且困难的过程。如今,使用深度学习的对象识别方法正变得越来越普遍。这项研究开发了一种识别向日葵疾病的策略。总共使用了1428张照片来完成这项任务。图像也可以使用调整大小、调整对比度和增强颜色等方法进行处理。在这里,使用k-means聚类对受疾病影响的照片区域进行分割,然后从这些区域检索特征。使用四个深度学习分类器完成分类。为了比较分类器的质量,计算了四个性能评价指标。总体而言,表现最好的分类器是ResNet50分类器,其平均准确率为97.88%,最低的准确率来自Inception V3。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SunNet: A Deep Learning Approach to Detect Sunflower Disease
Helianthus annuus, often known as sunflower, is a crop that is only mildly affected by drought. The agricultural sector of the economy benefits greatly from this. However, various illnesses have imposed a halt on sunflower cultivation over the world. However, many severe diseases will affect plants if corrective measures are not taken sooner. Therefore, it will have a negative impact on sunflower yield, quantity, and quality. Diagnosing a disease by hand can be a time-consuming and difficult process. Object recognition methods that use deep learning are becoming increasingly commonplace today. This study has developed a strategy for identifying diseases in sunflowers. A total of 1428 photos were utilized to complete this task. Images have also been processed using methods like resizing, adjusting contrast, and boosting color. Here, the area of the photos afflicted by the disease is segmented by using k-means clustering, and then retrieved characteristics from those regions. Four deep-learning classifiers were used to complete the classification. For the purpose of comparing classifier quality, four performance evaluation measures are computed. The best-performing classifier overall was a ResNet50 classifier, which had an average accuracy of 97.88% and the lowest accuracy is obtained from Inception V3.
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