Tilly, Nora ORCID: 0000-0002-2978-6188 and Bareth, Georg (2019). Estimating Nitrogen from Structural Crop Traits at Field Scale-A Novel Approach Versus Spectral Vegetation Indices. Remote Sens., 11 (17). BASEL: MDPI. ISSN 2072-4292
Full text not available from this repository.Abstract
A sufficient nitrogen (N) supply is mandatory for healthy crop growth, but negative consequences of N losses into the environment are known. Hence, deeply understanding and monitoring crop growth for an optimized N management is advisable. In this context, remote sensing facilitates the capturing of crop traits. While several studies on estimating biomass from spectral and structural data can be found, N is so far only estimated from spectral features. It is well known that N is negatively related to dry biomass, which, in turn, can be estimated from crop height. Based on this indirect link, the present study aims at estimating N concentration at field scale in a two-step model: first, using crop height to estimate biomass, and second, using the modeled biomass to estimate N concentration. For comparison, N concentration was estimated from spectral data. The data was captured on a spring barley field experiment in two growing seasons. Crop surface height was measured with a terrestrial laser scanner, seven vegetation indices were calculated from field spectrometer measurements, and dry biomass and N concentration were destructively sampled. In the validation, better results were obtained with the models based on structural data (R-2 < 0.85) than on spectral data (R-2 < 0.70). A brief look at the N concentration of different plant organs showed stronger dependencies on structural data (R-2: 0.40-0.81) than on spectral data (R-2: 0.18-0.68). Overall, this first study shows the potential of crop-specific across-season two-step models based on structural data for estimating crop N concentration at field scale. The validity of the models for in-season estimations requires further research.
Item Type: | Journal Article | ||||||||||||
Creators: |
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URN: | urn:nbn:de:hbz:38-142548 | ||||||||||||
DOI: | 10.3390/rs11172066 | ||||||||||||
Journal or Publication Title: | Remote Sens. | ||||||||||||
Volume: | 11 | ||||||||||||
Number: | 17 | ||||||||||||
Date: | 2019 | ||||||||||||
Publisher: | MDPI | ||||||||||||
Place of Publication: | BASEL | ||||||||||||
ISSN: | 2072-4292 | ||||||||||||
Language: | English | ||||||||||||
Faculty: | Faculty of Mathematics and Natural Sciences | ||||||||||||
Divisions: | Faculty of Mathematics and Natural Sciences > Department of Geosciences | ||||||||||||
Subjects: | no entry | ||||||||||||
Uncontrolled Keywords: |
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Refereed: | Yes | ||||||||||||
URI: | http://kups.ub.uni-koeln.de/id/eprint/14254 |
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