利用无人机上的高光谱装置检索小麦生物量

L. Xia, R. R. Zhang, L. P. Chen, Y. Wen, F. Zhao, J. Hou
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引用次数: 1

摘要

利用无人机(UAV)上的高光谱相机获取的高光谱数据,对冬小麦生物量进行了估算。选取高光谱数据的每两个波段计算归一化植被指数(NDVI)和比值植被指数(RVI)两种植被指数。建立冬小麦生物量与这些指标之间的线性模型,利用决定系数R²绘制R²值的二维分布。土壤和小麦覆盖像元的NDVI和RVI比较表明,RVI比NDVI更能有效地掩盖土壤的影响。计算NDVI的最佳波段主要在820 nm和725 ~ 750 nm附近。对于RVI的评估,在820 ~ 832 nm、794 ~ 808 nm、770 ~ 788 nm、725 ~ 750 nm和890 nm的波长范围内,RVI是最合适的。本研究采用线性回归模型,优选波段的决定系数R²大于0.88。
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Retrieving wheat Biomass by using a hyper-spectral device on UAV
In this study, the biomass of winter wheat was estimated by using hyperspectral data obtained from a hyperspectral camera on an Unmanned Aerial Vehicle (UAV). Every two bands from the hyperspectral data were selected to calculate two kinds of vegetation indexes: the Normalized Difference Vegetation Index (NDVI) and Ratio Vegetation Index (RVI). Linear models were established between winter wheat biomass and those indexes, and coefficient of determination R² was used to draw the two-dimensional distribution of R² values. The comparison between NDVI and RVI for pixel covered by soil and wheat showed that RVI is more efficient to mask the influence from soil than NDVI. For calculating the NDVI, optimal bands are located mainly around 820 nm and 725 nm to 750 nm. For assessing RVI, the wavelength range from 820 to 832 nm, 794 to 808 nm, 770 to 788 nm, 725 nm to 750 nm and 890 nm for RVI are most suitable. Those optimal bands can achieve a coefficient of determination R² higher than 0.88 by using the linear regression model in the study.
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Proceedings of the British Society of Animal Science Proceedings of the XIIIth International Symposium on Ruminant Physiology (ISRP 2019) Proceedings of the British Society of Animal Science Proceedings of the Seventeenth Biennial Conference of the Australasian Pig Science Association (APSA) Proceedings of the 9th Workshop on Modelling Nutrient Digestion and Utilization in Farm Animals (MODNUT)
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