Detecção de Desfolha de Soja Utilizando Redes Neurais Convolucionais

Patrik Olã Bressan, Wesley Nunes Gonçalves
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引用次数: 1

Abstract

The agribusiness represents a significant portion of the global economy. In Brazil, agribusiness has a significant share of the country’s economy and represented 21.6% of GDP in 2017. To increase productivity, proper management of a crop, including pest control, is of vital importance. Annually, plant pests cause losses of 20% to 40% of production. For this reason, it is important to monitor the level of defoliation to take preventive actions. Therefore, in this work an automatic methodology is proposed using Convolutional Neural Networks, to detect the level of defoliation from leaf images in the soybean crop. In addition to detecting the presence of defoliation, the proposed methodology also provides the affected regions of the leaf through the segmentation of the image. Experimental results showed 83% accuracy using the proposed methodology versus 60% of SegNet CNN. The results are promising considering that the images were captured in the field, which presents challenges such as lighting, stages of development, scale, among others.
利用卷积神经网络检测大豆落叶
农业综合企业是全球经济的重要组成部分。在巴西,农业综合企业在该国经济中占有重要份额,2017年占GDP的21.6%。为了提高生产力,对作物进行适当的管理,包括虫害防治,是至关重要的。每年,植物害虫造成20%至40%的产量损失。因此,监测落叶水平以采取预防措施是很重要的。因此,在这项工作中,提出了一种使用卷积神经网络的自动方法,以检测大豆作物叶片图像中的落叶程度。除了检测落叶的存在外,该方法还通过图像分割提供叶片的受影响区域。实验结果表明,使用该方法的准确率为83%,而SegNet CNN的准确率为60%。考虑到这些图像是在现场拍摄的,这带来了诸如照明、开发阶段、规模等方面的挑战,结果很有希望。
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