期刊论文详细信息
IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
A Machine-Learning Approach to PolInSAR and LiDAR Data Fusion for Improved Tropical Forest Canopy Height Estimation Using NASA AfriSAR Campaign Data
Marco Lavalle1  Mariano Garcia2  Heiko Balzter3  Maryam Pourshamsi4 
[1] , Madrid, Spain;Department of Geology, Geography and Environment, University of Alcal&xe1;Radar Science and Engineering Group, Jet Propulsion Laboratory, California Institute of Technology, Pasadena, CA, USA;School of Geography, Geology and the Environment, Centre for Landscape and Climate Research, University of Leicester, Leicester, U.K.;
关键词: Data fusion;    forest height;    L-band;    LiDAR (RH100);    polarimetric synthetic aperture radar interferometry (PolInSAR);    support vector machine (SVM);   
DOI  :  10.1109/JSTARS.2018.2868119
来源: DOAJ
【 摘 要 】

This paper investigates the benefits of integrating multibaseline polarimetric interferometric SAR (PolInSAR) data with LiDAR measurements using a machine-learning approach in order to obtain improved forest canopy height estimates. Multiple interferometric baselines are required to ensure consistent height retrieval performance across a broad range of tree heights. Previous studies have proposed multibaseline merging strategies using metrics extracted from PolInSAR measurements. Here, we introduce the multibaseline merging using a support vector machine trained by sparse LiDAR samples. The novelty of this method lies in the new way of combining the two datasets. Its advantage is that it does not require a complete LiDAR coverage, but only sparse LiDAR samples distributed over the PolInSAR image. LiDAR samples are not used to obtain the best height among a set of height stacks, but rather to train the retrieval algorithm in selecting the best height using the variables derived through PolInSAR processing. This enables more accurate height estimation for a wider scene covered by the SAR with only partial LiDAR coverage. We test our approach on NASA AfriSAR data acquired over tropical forests by the L-band UAVSAR and the LVIS LiDAR instruments. The estimated height from this approach has a higher accuracy (r2 = 0.81, RMSE = 7.1 m) than previously introduced multibaseline merging approach (r2 = 0.67, RMSE = 9.2 m). This method is beneficial to future spaceborne missions, such as GEDI and BIOMASS, which will provide a wealth of near-contemporaneous LiDAR samples and PolInSAR measurements for mapping forest structure at global scale.

【 授权许可】

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