Title of article :
Airborne multi-temporal L-band polarimetric SAR data for biomass estimation in semi-arid forests
Author/Authors :
Tanase، نويسنده , , Mihai A. and Panciera، نويسنده , , Rocco and Lowell، نويسنده , , Kim and Tian، نويسنده , , Siyuan and Hacker، نويسنده , , Jorg M. and Walker، نويسنده , , Jeffrey P.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Abstract :
Using the airborne Polarimetric L-band Imaging Synthetic aperture radar (PLIS) the impact of high revisit cycle and full polarimetric acquisitions on biomass retrieval was investigated by means of backscatter-based multi-temporal methods. Parametric and non-parametric models were used to relate reference biomass levels obtained from field plot measurements and high point density lidar data to backscatter intensities or polarimetric target decomposition components. Single-date retrieval using multiple independent variables provided lower estimation errors when compared to models using one independent variable with errors decreasing by 2% to 15%. The multi-temporal aggregation of daily biomass estimates did not improve the overall retrieval accuracy but provided more reliable estimates with respect to single-date methods. Backscatter intensities improved estimation accuracies up to 10% compared to polarimetric target decomposition components. Using all four polarizations increased the estimation accuracy marginally (2%) when compared to a dual-polarized system. The biomass estimation error was considerably reduced (up to 30%) only by decreasing the spatial resolution and was related to decreasing forest variability with increasing pixel size. These results indicate that, at least in semi-arid areas, future L-band missions would not significantly improve biomass estimation accuracy using backscatter-based modeling approaches despite their better spatial resolution, higher revisit cycles and the availability of fully polarimetric information.
Keywords :
L-band radar , Forest biomass , Multi-temporal , Random forest , Forest variability , Polarimetric decomposition
Journal title :
Remote Sensing of Environment
Journal title :
Remote Sensing of Environment