Title of article
The impact of relative radiometric calibration on the accuracy of kNN-predictions of forest attributes
Author/Authors
Koukal، نويسنده , , Tatjana and Suppan، نويسنده , , Franz and Schneider، نويسنده , , Werner، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2007
Pages
7
From page
431
To page
437
Abstract
The k-nearest-neighbour (kNN) algorithm is widely applied for the estimation of forest attributes using remote sensing data. It requires a large amount of reference data to achieve satisfactory results. Usually, the number of available reference plots for the kNN-prediction is limited by the size of the area covered by a terrestrial reference inventory and remotely sensed imagery collected from one overflight. The applicability of kNN could be enhanced if adjacent images of different acquisition dates could be used in the same estimation procedure. Relative radiometric calibration is a prerequisite for this. This study focuses on two empirical calibration methods. They are tested on adjacent LANDSAT TM scenes in Austria. The first, quite conventional one is based on radiometric control points in the overlap area of two images and on the determination of transformation parameters by linear regression. The other, recently developed method exploits the kNN-cross-validation procedure. Performance and applicability of both methods as well as the impact of phenology are discussed.
Keywords
Scene-to-scene radiometric normalisation , cross-validation , Forest inventory , phenology , k-nearest-neighbour method
Journal title
Remote Sensing of Environment
Serial Year
2007
Journal title
Remote Sensing of Environment
Record number
1575212
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