利用机器学习技术对卫星图像进行数字化处理,应用于咖啡作物。

Q1 Veterinary
Jonathan da Rocha Miranda
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引用次数: 3

摘要

遥感技术可以对咖啡的产量、植物健康和营养状况进行监测和估算,并给出合理的正确答案。卫星耦合传感器可以在时间尺度上获取作物的光谱特征信息,以便监测和检测物候变化。然而,轨道传感器获得的数据积累使得很难理解咖啡各方面之间的关系。因此,机器学习可以执行数据挖掘并满足构成咖啡行为的光谱签名模式。本文献综述寻求对使用机器学习工具应用于咖啡作物监测卫星数字图像处理的研究进行调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of machine learning in digital processing of satellite images applied to coffee crop.
Abstract Remote sensing can be used to monitor and estimate, with reasonable correct answers, the yield, plant health, and coffee nutrition. Satellite-coupled sensors can obtain information about the spectral signature of the crop, on a time scale, in order to monitor and detect phenological changes. However, the accumulation of data obtained by orbital sensors makes it difficult to understand the relationship between the aspects of coffee. Thus, machine learning can perform data mining and meet the spectral signature patterns that constitute coffee behavior. This literature review sought the survey of research that used machine learning tools applied in digital image processing from satellites for coffee crop monitoring.
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来源期刊
CAB Reviews: Perspectives in Agriculture, Veterinary Science, Nutrition and Natural Resources
CAB Reviews: Perspectives in Agriculture, Veterinary Science, Nutrition and Natural Resources Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
CiteScore
2.00
自引率
0.00%
发文量
41
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