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Predicting weed invasion in a sugarcane cultivar using multispectral image

机译:使用多光谱图像预测杂草品种中的杂草侵袭

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摘要

The cultivation of sugar cane has been gaining great focus in several countries due to its diversity of use. The modernization of agriculture has allowed high productivity, which is affected by the invasion of weeds. With sustainable agriculture, the use of herbicides has been increasingly avoided in society, requiring more effective weed control methods. In this paper, we propose a statistical model capable of identifying the invasion of weeds in the field, using four color spectra as regressor variables obtained by a multispectral camera mounted on an unmanned aerial vehicle. With the exact identification of the weed infestation, it is possible to carry out the management in the field with herbicide applications in the exact places, thus avoiding the increase of the cost of production or even dispensing with the use of herbicides, effecting the mechanical removal of them. Results show that in the experimental field, it was possible to reduce herbicide spraying by 57%.
机译:由于其使用的多样性,甘蔗的种植在若干国家一直在占据若干国家。农业现代化允许高生产率,受杂草的入侵影响。通过可持续农业,在社会中越来越多地避免使用除草剂,需要更有效的杂草控制方法。在本文中,我们提出了一种统计模型,其能够使用四种颜色光谱作为由安装在无人空中车辆上的多光谱相机获得的回归变量来识别该领域中杂草的侵袭。随着杂草侵染的确切鉴定,可以在确切的地方进行使用除草剂应用的现场管理,从而避免使用除草剂的生产成本甚至分配,从而实现机械去除他们。结果表明,在实验领域,可以将除草剂喷涂减少57%。

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