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Predicting wet gluten content of winter wheat through remote sensing method based on HJ-1A/1B images

机译:基于HJ-1A / 1B图像的遥感预测冬小麦湿面筋含量

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The purpose of this study is to further improve the accuracy of predicting winter wheat quality with remote sensing, and to enhance the prediction mechanism. In order to predict wet gluten content (WGC) in winter wheat using HJ-1A/1B images, The experiment was carried out in Jiangsu regions during 2010 winter wheat growth season. Based on HJ-1A/1B image, synchronous or quasi-simultaneous ground observations of SPAD value, biomass, leaf area index(LAI), leaf nitrogen content(LNC) and grain quality parameters of winter wheat at jointing and booting stage. Firstly, this study analyzed the relationships between WGC and remote sensing variables, and between growth parameters and satellite remote sensing variables. Secondly, the quantitative models were established and evaluated to predict WGC. Finally, the indirect model of predicting WGC based on remote sensing variable and biomass was compared to the direct model based on only remote sensing variable. The results showed that: The relationship between WGC and remote sensing variables was more significant at booting stage than at jointing stage. At booting stage, WGC presented a more significant correlation with normalized difference vegetation index (NDVI) than other remote sensing variables. At last, a direct model for predicting WGC was established with only NDVI. At the same time, biomass in this period also showed a higher correlation with WGC. Based on NDVI and biomass, an indirect model of predicting WGC also was established. The indirect and direct models were evaluated with 25 independent samples by the determination coefficient (R2) with 0.766 and 0.674, the root mean square error(RMSE) with 1.81% and 2.59%, respectively. The indirect model based on NDVI and biomass performed better to predict winter wheat WGC than the direct model based on only NDVI, and obtained the higher accuracy by 30% than the direct model. It is concluded that the research can provide an effective way to improve the accuracy o--f predicting wheat quality based on aerospace remote sensing, and contribute to large-scale application and promotion of the research results.
机译:本研究的目的是进一步提高通过遥感预测冬小麦质量的准确性,并增强预测机制。为了预测使用HJ-1A / 1B图像在冬小麦中预测湿麸质含量(WGC),实验在2010年江苏冬小麦生长季节进行江苏地区进行。基于HJ-1A / 1B的图像,同步或准同质地面观察的SPAD值,生物质,叶面积指数(LAI),叶片氮含量(LNC)和冬小麦的粒度和螺旋阶段的粒度参数。首先,本研究分析了WGC与遥感变量与生长参数与卫星遥感变量之间的关系。其次,建立并评估了定量模型以预测WGC。最后,基于仅基于遥感变量的直接模型对基于遥感变量和生物质预测WGC的间接模型。结果表明:WGC与遥感变量之间的关系在引导阶段比在连接阶段更重要。在引导阶段,WGC与归一化差异植被指数(NDVI)提出比其他遥感变量更为显着的相关性。最后,只有NDVI建立了预测WGC的直接模型。与此同时,在此期间的生物质也显示出与WGC的相关性。基于NDVI和生物质,建立了预测WGC的间接模型。通过测定系数(R 2 )用0.766和0.674的测定系数(R 2 )进行间接和直接模型,分别为1.81%和2.59%的根均线误差(RMSE)。基于NDVI和生物质的间接模型更好地进行了比仅基于NDVI的直接模型预测冬小麦WGC,并获得比直接模型更高的精度30%。它的结论是,该研究可以提供提高精度的有效方法 - F预测基于航空航天遥感的小麦质量,有助于大规模应用和促进研究结果。

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