利用HJ-CCD影像遥感变量预测冬小麦沉降值

Changwei Tan, Lu Tong, Wenshan Guo, Jihua Wang, Wenjiang Huang
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引用次数: 0

摘要

为了进一步提高冬小麦品质遥感预测的精度和预测机理,分析了冬小麦遥感变量与农艺参数之间的定量关系。研究结果表明:孕穗期沉降值(SV)与遥感变量的关系比拔节期更为显著;在启动阶段,SV与SIPI的相关性高于其他遥感变量。建立了基于结构不敏感色素指数(SIPI)和叶片含氮量(LNC)的间接模型和仅优化土壤调节植被指数(OSAVI)的直接模型来预测SV。采用20个样品对间接模型和直接模型进行评价,决定系数(R2)分别为0.741和0.555,均方根误差(RMSE)分别为3.64ml和4.28ml。间接模型对SV的预测精度比直接模型提高了15%。研究结果表明,该研究为提高小麦品质遥感预测精度提供了有效途径,有助于遥感预测结果的大规模应用和推广。
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Prediction of sedimentation value in winter wheat using remote sensing variables obtained from HJ-CCD images
In order to further improve the accuracy and the mechanism of predicting winter wheat quality using remote sensing method, The quantitative relationships between remote sensing variables and agronomy parameters of winter wheat were analyzed. The results of the study showed that: the relationships between sedimentation value (SV) and remote sensing variables were more significant at booting stage than at jointing stage. At booting stage, SV presented a more significant correlation with SIPI than other remote sensing variables. An indirect model based on structure insensitive pigment index(SIPI) and leaf nitrogen content (LNC) and a direct model based on only optimization of soil-adjusted vegetation index(OSAVI) was established to predict SV. The indirect and direct models were evaluated with 20 samples by the determination coefficient(R2) with 0.741 and 0.555, the root mean square error(RMSE) with 3.64ml and 4.28ml, respectively. The indirect model performed better to predict SV with the higher accuracy by 15% than the direct model. It is concluded that the research can provide an effective way to improve the accuracy of predicting wheat quality with aerospace remote sensing, and contribute to large-scale application and promotion of the results.
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