Abstract

Abstract. Remote sensing is a suitable tool for estimating the spatial variability of crop canopy characteristics, such as canopy chlorophyll content (CCC) and green ground cover (GGC%), which are often used for crop productivity analysis and site-specific crop management. Empirical relationships exist between different vegetation indices (VI) and CCC and GGC% that allow spatial estimation of canopy characteristics from remote sensing imagery. However, the use of VIs is not suitable for an operational production of CCC and GGC% maps due to the limited transferability of derived empirical relationships to other regions. Thus, the operational value of crop status maps derived from remotely sensed data would be much higher if there was no need for reparametrization of the approach for different situations. This paper reports on the suitability of high-resolution RapidEye data for estimating crop development status of winter wheat over the growing season, and demonstrates two different approaches for mapping CCC and GGC%, which do not rely on empirical relationships. The final CCC map represents relative differences in CCC, which can be quickly calibrated to field specific conditions using SPAD chlorophyll meter readings at a few points. The prediction model is capable of predicting SPAD readings with an average accuracy of 77%. The GGC% map provides absolute values at any point in the field. A high R² value of 80% was obtained for the relationship between estimated and observed GGC%. The mean absolute error for each of the two acquisition dates was 5.3% and 8.7%, respectively.

Highlights

  • Remote sensing is a suitable tool for estimating the spatial variability of crop canopy characteristics such as green ground cover (GGC%) and canopy chlorophyll content (CCC)

  • Correlation analysis between the CCCSPAD data obtained during the field sampling campaign and six spectral vegetation indices (VI) derived from multi-spectral RapidEye imagery revealed best correlations for those indices incorporating the red-edge reflection (Table 1)

  • Results demonstrated that high-resolution RapidEye imagery is suitable for providing accurate spatial information on CCC and Green ground cover (GGC)% during the growing season, and is potentially useful for site-specific crop management

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Summary

Introduction

Remote sensing is a suitable tool for estimating the spatial variability of crop canopy characteristics such as green ground cover (GGC%) and canopy chlorophyll content (CCC). Both variables are often used for crop productivity analysis and sitespecific crop management. Leaf chlorophyll absorption in the visible part of the electromagnetic spectrum provides the basis for using remotely sensed reflectance as a tool for the determination of crop development status. Even though the normalized difference vegetation index (NDVI) (Rouse et al 1973) is the most commonly used VI, it has the limitation that it tends to saturate when LAI exceeds 2, and it is strongly influenced by soil background conditions (Baret et al, 1991)

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