Classification of soybean pods using the deep learning techniques

P. M. D. C. Bandeira, Flora Maria de Melo Villar, Priscila Pascali da Costa Bandeira, Iara Aparecida Dias
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Abstract

Crop productivity estimate aims at the economic definitions about crop, agricultural management, and land use, among others. However, it is common to observe the use of visual methods to estimate the productivity of the soybean crop through the classification of pods, resulting in a slow, costly method besides being susceptible to human errors. Thus, the objective of this work was to carry out the training of two deep learning methods to classify soybean pods according to the number of grains based on images obtained using a smartphone. Data collection was carried out at the Federal University of Viçosa (UFV). Data consisted of capturing images from a smartphone and training two deep learning models: Mask R-CNN and YOLOv4. To capture the images, the soybean pods were pulled from the plants and placed in a white-bottom container. This procedure occurred for each plant collected. Both models tended towards a better classification for the two- and three-grain pods, reaching a value of 90% for the F1 score metric. This fact may have occurred because of the greater amount of these two types of pods present in the chosen cultivars. Finally, the potential of using deep learning to classify soybean pods based on the number of grains was observed.
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利用深度学习技术对豆荚进行分类
作物生产力估计旨在对作物、农业管理和土地利用等进行经济定义。然而,观察到使用视觉方法通过豆荚分类来估计大豆作物的生产力是很常见的,这导致了一种缓慢、昂贵的方法,而且容易受到人为错误的影响。因此,这项工作的目的是根据使用智能手机获得的图像,对两种深度学习方法进行训练,以根据颗粒数量对大豆荚进行分类。数据收集在维索萨联邦大学(UFV)进行。数据包括从智能手机上捕捉图像并训练两个深度学习模型:Mask R-CNN和YOLOv4。为了拍摄这些图像,将大豆荚从植物中取出,放在一个白色底部的容器中。该程序适用于采集的每株植物。两个模型都倾向于对二粒荚和三粒荚进行更好的分类,F1得分指标的值达到90%。这一事实的发生可能是因为所选品种中存在大量这两种类型的荚。最后,观察了使用深度学习根据粒数对大豆荚进行分类的潜力。
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0.00%
发文量
35
审稿时长
24 weeks
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