Title of article :
Assessment of radiometric correction techniques in analyzing vegetation variability and change using time series of Landsat images
Author/Authors :
Vicente-Serrano، نويسنده , , Sergio M. and Pérez-Cabello، نويسنده , , Fernando and Lasanta، نويسنده , , Teodoro، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Pages :
19
From page :
3916
To page :
3934
Abstract :
The homogeneity of time series of satellite images is crucial when studying abrupt or gradual changes in vegetation cover via remote sensing data. Various sources of noise affect the information received by satellites, making it difficult to differentiate the surface signal from noise and complicates attempts to obtain homogeneous time series. We compare different procedures developed to create homogeneous time series of Landsat images, including sensor calibration, atmospheric and topographic correction, and radiometric normalization. Two seasonal time series of Landsat images were created for the middle Ebro Valley (NE Spain) covering the period 1984–2007. Different processing steps were tested and the best option selected according to quantitative statistics obtained from invariant areas, simultaneous medium-resolution images, and field measurements. The optimum procedure includes cross-calibration between Landsat sensors, atmospheric correction using complex radiative transfer models, a non-lambertian topographic correction, and a relative radiometric normalization using an automatic procedure. Finally, three case studies are presented to illustrate the role of the different radiometric correction procedures when analyzing and explaining gradual and abrupt temporal changes in vegetation cover, as well as temporal variability. We have shown that to analyze different vegetation processes with Landsat data, it is necessary to accurately ensure the homogeneity of the multitemporal datasets by means of complex radiometric correction procedures. Failure to follow such a procedure may mean that the analyzed processes are non-recognizable and that the obtained results are invalid.
Keywords :
Landsat time series , TM-ETM+ cross-calibration , Atmospheric correction , Spain , vegetation change , Relative normalization , Ebro valley
Journal title :
Remote Sensing of Environment
Serial Year :
2008
Journal title :
Remote Sensing of Environment
Record number :
1575562
Link To Document :
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