剔除土壤背景的冬小麦根域土壤含水率遥感反演方法
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国家重点研发计划项目(2017YFC0403302)、国家自然科学基金项目(51979232)、陕西省自然科学基础研究计划项目(2019JM-066)和杨凌示范区科技计划项目(2018GY-03)


Inversion Method for Soil Water Content in Winter Wheat Root Zone with Eliminating Effect of Soil Background
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    摘要:

    为剔除无人机多光谱图像中的土壤背景、提高作物根域土壤含水率反演精度,以不同水分处理的拔节期冬小麦为研究对象,利用无人机多光谱相机分别在09:00、11:00、13:00、15:00和17:00等5个时刻获取高分辨率多光谱图像,采用改进的植被指数阈值法快速确定植被像元与土壤像元的分类阈值,通过阈值划分剔除土壤背景,并根据阈值变化研究土壤背景对冬小麦冠层反射率的影响,建立了剔除土壤背景前后基于植被指数的土壤含水率反演模型。结果表明,应用改进的植被指数阈值法可有效剔除多光谱图像中的土壤背景,其中基于植被指数RDVI的剔除精度最高,总体精度在91.32%以上;土壤背景对冬小麦冠层近红外波段的反射率影响较大,红边波段次之,而对可见光波段的反射率影响较小;剔除土壤背景前后的植被指数与土壤含水率均呈线性关系,剔除土壤背景对反演土壤含水率的精度有显著提高,其中NGRDI反演深度10~20cm的冬小麦根域土壤含水率效果最好,建模集R2和RMSE分别为0.739和2.0%,验证集R2和RMSE分别为0.787和2.1%。

    Abstract:

    Eliminating the soil background in multispectral images with unmanned aerial vehicles (UAV) to improve the inversion accuracy of soil water content (SWC) in crop root zone is an effective method. The winter wheat (in the jointing stage) under different water treatments was used as the research object. Firstly, the UAV-borne multispectral cameras was used to obtain the high-resolution multispectral images at five moments (09:00, 11:00, 13:00, 15:00 and 17:00). Secondly, the improved vegetation index threshold method was used to determine the classification threshold to divide vegetation pixels and soil pixels quickly, and the soil background was eliminated with the classification threshold. According to the threshold changes of the vegetation index threshold method, the effect of soil background on the canopy reflectance was studied. Finally, the inversion models of SWC with vegetation indices were established before and after eliminating the soil background. The research results showed that the improved vegetation index threshold method could eliminate the soil background in multispectral images effectively, and the elimination accuracy of vegetation index RDVI was the highest (the overall accuracy was above 91.32%); the effect of soil background on the canopy reflectance in the near-infrared band was the biggest, followed by it in the red edge band and the effect in the visible light band was the lowest; there was a linear relationship between the vegetation index and SWC before and after eliminating the soil background, and the inversion accuracy of SWC in winter wheat root zone was improved significantly after eliminating the soil background. The performance of NGRDI at the depth of 10~20cm was the best with R2 and RMSE of calibration dataset of 0.739 and 2.0%, and these of validation dataset were 0.787 and 2.1%, respectively.

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张智韬,周永财,杨帅,谭丞轩,劳聪聪,许崇豪.剔除土壤背景的冬小麦根域土壤含水率遥感反演方法[J].农业机械学报,2021,52(4):197-207. ZHANG Zhitao, ZHOU Yongcai, YANG Shuai, TAN Chengxuan, LAO Congcong, XU Chonghao. Inversion Method for Soil Water Content in Winter Wheat Root Zone with Eliminating Effect of Soil Background[J]. Transactions of the Chinese Society for Agricultural Machinery,2021,52(4):197-207.

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  • 收稿日期:2020-06-10
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  • 在线发布日期: 2021-04-10
  • 出版日期: 2021-04-10
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