Potentials of RapidEye time series for improved classification of crop rotations in heterogeneous agricultural landscapes: experiences from irrigation systems in Central Asia
Paper Abstract
In Central Asia, more than eight Million ha of agricultural land are under irrigation. But severe degradation problems and
unreliable water distribution have caused declining yields during the past decades. Reliable and area-wide information
about crops can be seen as important step to elaborate options for sustainable land and water management. Experiences
from RapidEye classifications of crop in Central Asia are exemplarily shown during a classification of eight crop classes
including three rotations with winter wheat, cotton, rice, and fallow land in the Khorezm region of Uzbekistan covering
230,000 ha of irrigated land. A random forest generated by using 1215 field samples was applied to multitemporal
RapidEye data acquired during the vegetation period 2010. But RapidEye coverage varied and did not allow for
generating temporally consistent mosaics covering the entire region. To classify all 55,188 agricultural parcels in the
region three classification zones were classified separately. The zoning allowed for including at least three observation
periods into classification. Overall accuracy exceeded 85 % for all classification zones. Highest accuracies of 87.4 %
were achieved by including five spatiotemporal composites of RapidEye. Class-wise accuracy assessments showed the
usefulness of selecting time steps which represent relevant phenological phases of the vegetation period. The presented
approach can support regional crop inventory. Accurate classification results in early stages of the cropping season
permit recalculation of crop water demands and reallocation of irrigation water. The high temporal and spatial resolution
of RapidEye can be concluded highly beneficial for agricultural land use classifications in entire Central Asia.
This paper was published in SPIE Proceedings Vol. 8174