Lorey'S Height Regression For Icesat-Glas Waveforms In Hyrcanian Deciduous Forests Of Iran

2015 IEEE International Geoscience and Remote Sensing Symposium (IGARSS)(2015)

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摘要
Since Lidar technology provides the most direct measurements of 3D of phenomena, it plays a critical role in a variety of applications. Forest canopy height as a main factor in forest biomass estimation is costly and time consuming to be measured on the ground. This study aims to estimate Lorey's height "H-lorey" using GLAS data based on regression models. Different metrics like waveform extent "W-ext", trailedge extent "Htrail" and lead-edge extent "H-lead" were extracted from waveforms and a terrain index "TI" was also calculated using a digital elevation model. H-lorey estimated using multiple regression models were compared to field measurements data. A 5-fold cross validation method was used to validate the results. Best model with lowest AIC (297.440) was resulted using combination of W-ext and TI (R-a(2)=0.72; RMSE=5.04m). The results show capability of ICESat-GLAS to estimate Lorey's height in sloped area with a simple regression model. It is prospected to reach better result using other statistical methods and also improvement of processing techniques for LiDAR waveforms in the case of sloped terrain.
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关键词
ICESat-GLAS,Lorey's height,Waveform extent,Terrain index,Regression model
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