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Sugarcane yield estimates using time series analysis of spot vegetation images.

机译:使用点植被图像的时间序列分析来估算甘蔗产量。

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摘要

The current system used in Brazil for sugarcane (Saccharum officinarum L.) crop forecasting relies mainly on subjective information provided by sugar mill technicians and on information about demands of raw agricultural products from industry. This study evaluated the feasibility to estimate the yield at municipality level in Sao Paulo State, Brazil, using 10-day periods of SPOT Vegetation NDVI images and ECMWF meteorological data. Twenty municipalities and seven cropping seasons were selected between 1999 and 2006. The plant development cycle was divided into four phases, according to the sugarcane physiology, obtaining spectral and meteorological attributes for each phase. The most important attributes were selected and the average yield was classified according to a decision tree. Values obtained from the NDVI time profile from December to January next year enabled to classify yields into three classes: below average, average and above average. The results were more effective for 'average' and 'above average' classes, with 86.5 and 66.7% accuracy respectively. Monitoring sugarcane planted areas using SPOT Vegetation images allowed previous analysis and predictions on the average municipal yield trend.
机译:巴西目前用于甘蔗( Saccharum officinarum L.)作物预报的系统主要依靠制糖厂技术人员提供的主观信息以及有关工业原料农产品需求的信息。这项研究使用10天的SPOT植被NDVI图像和ECMWF气象数据评估了在巴西圣保罗州估计市政级单产的可行性。在1999年至2006年期间,选择了20个直辖市和七个种植季节。根据甘蔗的生理状况,植物的生长周期分为四个阶段,获得每个阶段的光谱和气象属性。选择最重要的属性,并根据决策树对平均产量进行分类。从NDVI时间分布图(从明年12月到明年1月)获得的值可将收益分成三类:低于平均水平,平均水平和高于平均水平。结果对于“平均”和“高于平均”等级更为有效,准确率分别为86.5和66.7%。使用SPOT植被图像监测甘蔗种植面积,可以对以前的平均市政单产趋势进行分析和预测。

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