基于深度神经网络和图像处理的水果作物害虫检测与分类,以减少农药的使用

Agustina Suárez, R. Molina, G. Ramponi, R. Petrino, L. Bollati, Daniel Sequeiros
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引用次数: 2

摘要

有机农业的目标是获得最高质量的食物,避免合成化学品,保护环境和保持土地的肥力。在这种情况下,有效的虫害控制可以减少产量损失和农药的施用,生产无公害蔬菜。在水果作物中,梨、苹果、核桃和榅桲树的主要害虫是Carpocapsa。这种昆虫会对果实造成不可逆转的损害,因为幼虫会在果实内部喂养种子。在本文中,我们提出了基于图像处理和深度神经网络的水果作物害虫自动检测和分类,利用从田间陷阱中获得的图像收集。由于数据集的大小有限,我们执行数据增强来增加用于训练的图像数量,防止过拟合,提高深度神经网络的学习率。结果表明,该分类器的总体准确率为94.8%,其中蛾类分类器的准确率和召回率分别为97.2%和93.6%,显示了该分类器在害虫检测中的有效性。对于深度神经网络分类器,每幅图像的推理时间达到了40毫秒。
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Pest detection and classification to reduce pesticide use in fruit crops based on deep neural networks and image processing
The aim for organic farming is obtaining food of the highest quality, avoiding synthetic chemicals, protecting the environment and preserving the fertility of the land. In this context, effective pest control allows to reduce yield loss and pesticides application producing pollution-free vegetables. In fruit crops, Carpocapsa is the main pest present in pear, apple, walnut and quince trees. This insect produces irreversible damage to the fruit, since the larvae feed the seeds inside the fruit. In this paper, we present automatic pest detection and classification in the context of fruit crops based on image processing and Deep Neural Networks, employing an image collection obtained from in-field traps. Due to the limited size of the data set, we perform data augmentation to increase the number of images for training, to prevent over-fitting and to improve the deep neural network learning rate. Results showed an overall accuracy of 94.8%, while precision and recall scores for the class related with the moth were around 97.2% and 93.6% respectively, demonstrating the efficacy of this type of classifier proposed for pest detection. An inference time of 40 ms per image for the deep neural network classifier has been reached.
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