Within-field wheat yield prediction from IKONOS data: a new matrix approach
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Corresponding Author
Date
2010-06-02
Date Issued
2004-01-01
ISI Journal
Impact factor: 2.976 (Year: 2010)
Citation
E A Enclona, Prasad Thenkabail, Dariana Celis, Jurgen Diekmann. (2/6/2010). Within-field wheat yield prediction from IKONOS data: a new matrix approach. International Journal of Remote Sensing, 25 (2), pp. 377-388.
Abstract
This study demonstrates a unique matrix approach to determine within-field variability in wheat yields using fine spatial resolution 4 m IKONOS data. The matrix approach involves solving a system of simultaneous equations based on IKONOS data and post-harvest yields available at entire field scale. This approach was compared with a regression-based modelling approach involving field-sensor measured yields and the corresponding IKONOS measured indices and wavebands. The IKONOS data explained 74–78% variability in wheat yield. This is a significant result since the finer spatial resolution leads to capturing greater spatial variability and detail in landscape relative to coarser spatial resolution data. A pixel-by-pixel mapping of wheat yield variability highlights the fine spatial detail provided by IKONOS data for precision farming applications.