Comparative Study of Computer Vision Models for Insect Pest Identification in Complex Backgrounds

G. L. Tenório, Felipe F. Martins, Thiago M. Carvalho, A. C. Leite, Karla Figueiredo, M. Vellasco, W. Caarls
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引用次数: 2

Abstract

Agriculture is considered the economic basis of countries around the globe, and the development of new technologies contributes to the harvesting efficiency. Autonomous vehicles are used in farms for seeding, harvesting and tasks like pesticide application. However, one of the main issues of any plantation is insect pest and disease identification, essential for pest control and maintenance of healthy plants. This work presents and compares three methods for insect pest identification using computer vision: Deep Convolutional Neural Network (DCNN), as a baseline; Hierarchical Deep Convolutional Neural Network (HD-CNN), in order to improve prediction of similar classes; and Pixel-wise Semantic Segmentation Network (SegNet). They were tested for two kinds of culture, soybean and cotton. SegNet outperformed both approaches by a wide margin: the methods had respective accuracies of 70.14% DCNN, 74.70% HD-CNN and 93.30% SegNet.
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复杂背景下害虫识别的计算机视觉模型比较研究
农业被认为是全球各国的经济基础,新技术的发展有助于提高收获效率。自动驾驶汽车在农场用于播种、收割和农药施用等任务。然而,任何种植园的主要问题之一是病虫害鉴定,这对病虫害控制和保持植物健康至关重要。这项工作提出并比较了使用计算机视觉识别害虫的三种方法:深度卷积神经网络(DCNN)作为基线;层次深度卷积神经网络(HD-CNN),以提高对相似类的预测;和逐像素语义分割网络(SegNet)。他们对两种作物进行了测试,大豆和棉花。SegNet的准确率分别为70.14% DCNN、74.70% HD-CNN和93.30% SegNet。
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