Correction of atmospheric influence on hyperspectral EO-1 Hyperion data for the red edge position estimation
Рубрика:
1Lyalko, VI, 1Sakhatsky, OI, 1Shportiuk, ZM, 1Sibirtseva, ON 1State institution «Scientific Centre for Aerospace Research of the Earth of the Institute of Geological Sciences of the National Academy of Sciences of Ukraine», Kyiv, Ukraine |
Kosm. nauka tehnol. 2009, 15 ;(3):32-41 |
https://doi.org/10.15407/knit2009.03.032 |
Язык публикации: Ukrainian |
Аннотация: We investigated the influence of atmospheric correction of the Hyperion data using dark object substraction on the Red Edge Position (REP) of spectral reflectance. The comparison of REP-images which were constructed without atmospheric correction and after it was made with the application of images classification to estimate the improvement of accuracy of land cover mapping with the use of the Red Edge Position. It is found that the atmospheric correction of satellite data shows the increase of the contrasts of REP values and the improvement of land cover mapping accuracy by classification.
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Ключевые слова: atmospheric correction, hyperspectral data, spectral reflectance |
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