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Spatio‐temporal combination of MODIS images – potential for snow cover mapping

Juraj PárajkaInstitute for Hydraulic and Water Resources Engineering Vienna University of Technology AustriaGünter BlöschlInstitute for Hydraulic and Water Resources Engineering Vienna University of Technology Austria
2008en
ABI

Аннотация

MODIS snow cover products are appealing for hydrological applications because of their good accuracy and daily availability. Their main limitation, however, is cloud obscuration. In this study we evaluate simple mapping methods, termed temporal and spatial filters, that reduce cloud coverage by using information from neighboring non‐cloud covered pixels in time or space, and by combining MODIS data from the Terra and Aqua satellites. The accuracy of the filter methods is evaluated over Austria, using daily snow depth observations at 754 climate stations and daily MODIS images in the period 2003–2005. The results indicate that the filtering techniques are remarkably efficient in cloud reduction, and the resulting snow maps are still in good agreement with the ground snow observations. There exists a clear, seasonally dependent, trade off between accuracy and cloud coverage for the various filtering methods. An average of 63% cloud coverage of the Aqua images is reduced to 52% for combined Aqua‐Terra images, 46% for the spatial filter, 34% for the 1‐day temporal filter and 4% for the 7‐day temporal filter, and the corresponding overall accuracies are 95.5%, 94.9%, 94.2%, 94.4% and 92.1%, respectively.

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Цитирований: 2Использованных источников: 0