Fusion of Plant Height and Vegetation Indices for the Estimation of Barley Biomass

被引:178
作者
Tilly, Nora [1 ]
Aasen, Helge [1 ]
Bareth, George [1 ]
机构
[1] Univ Cologne, GIS & RS, Inst Geog, D-50923 Cologne, Germany
关键词
terrestrial laser scanning; spectrometer; plant height; hyperspectral vegetation indices; biomass; precision agriculture; plot level; multi-temporal; CROP SURFACE MODELS; DIFFERENT GROWTH-STAGES; LASER-SCANNING DATA; MAPPING SYSTEM; GRAIN-YIELD; LIDAR; DENSITY; WHEAT; CANOPY; REFLECTANCE;
D O I
10.3390/rs70911449
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Plant biomass is an important parameter for crop management and yield estimation. However, since biomass cannot be determined non-destructively, other plant parameters are used for estimations. In this study, plant height and hyperspectral data were used for barley biomass estimations with bivariate and multivariate models. During three consecutive growing seasons a terrestrial laser scanner was used to establish crop surface models for a pixel-wise calculation of plant height and manual measurements of plant height confirmed the results (R-2 up to 0.98). Hyperspectral reflectance measurements were conducted with a field spectrometer and used for calculating six vegetation indices (VIs), which have been found to be related to biomass and LAI: GnyLi, NDVI, NRI, RDVI, REIP, and RGBVI. Furthermore, biomass samples were destructively taken on almost the same dates. Linear and exponential biomass regression models (BRMs) were established for evaluating plant height and VIs as estimators of fresh and dry biomass. Each BRM was established for the whole observed period and pre-anthesis, which is important for management decisions. Bivariate BRMs supported plant height as a strong estimator (R-2 up to 0.85), whereas BRMs based on individual VIs showed varying performances (R-2: 0.07-0.87). Fused approaches, where plant height and one VI were used for establishing multivariate BRMs, yielded improvements in some cases (R-2 up to 0.89). Overall, this study reveals the potential of remotely-sensed plant parameters for estimations of barley biomass. Moreover, it is a first step towards the fusion of 3D spatial and spectral measurements for improving non-destructive biomass estimations.
引用
收藏
页码:11449 / 11480
页数:32
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