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http://dx.doi.org/10.7780/kjrs.2018.34.6.3.5

Feasibility Assessment of Spectral Band Adjustment Factor of KOMPSAT-3 for Agriculture Remote Sensing  

Ahn, Ho-yong (National Institute of Agricultural Sciences, Rural Development Administration)
Kim, Kye-young (B&T Co.)
Lee, Kyung-do (National Institute of Agricultural Sciences, Rural Development Administration)
Park, Chan-won (National Institute of Agricultural Sciences, Rural Development Administration)
So, Kyu-ho (National Institute of Agricultural Sciences, Rural Development Administration)
Na, Sang-il (National Institute of Agricultural Sciences, Rural Development Administration)
Publication Information
Korean Journal of Remote Sensing / v.34, no.6_3, 2018 , pp. 1369-1382 More about this Journal
Abstract
As the number of multispectral satellites increases, it is expected that it will be possible to acquire and use images for periodically. However, there is a problem of data discrepancy due to different overpass time, period and spatial resolution. In particular, the difference in band bandwidths became different reflectance even for images taken at the same time and affect uncertainty in the analysis of vegetation activity such as vegetation index. The purpose of this study is to estimate the band adjustment factor according to the difference of bandwidth with other multispectral satellites for the application of KOMPSAT-3 satellite in agriculture field. The Spectral band adjustment factor (SBAF) were calculated using the hyperspectral satellite images acquired in the desert area. As a result of applying SBAF to the main crop area, the vegetation index showed a high agreement rate of relative percentage difference within 3% except for the Hapcheon area where the zenith angle was 25. For the estimation of SBAF, this study used only one set of images, which did not consider season and solar zenith angle of SBAF variation. Therefore, long-term analysis is necessary to solve SBAF uncertainty in the future.
Keywords
KOMPSAT-3; Landsat-8; Sentinel-2; TOA Reflectance; SBAF; NDVI;
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Times Cited By KSCI : 7  (Citation Analysis)
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