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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Data Fusion for Reconstruction of a DTM, Under a Woodland Canopy, From Airborne L-band InSAR
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Data Fusion for Reconstruction of a DTM, Under a Woodland Canopy, From Airborne L-band InSAR

机译:从机载L波段InSAR在林冠层下重建DTM的数据融合

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This paper investigates the utility of different parameters from polarimetric interferometric synthetic aperture radar (InSAR) data for the identification of ground pixels in a woodland area to enable accurate digital terrain model (DTM) generation from the InSAR height of the selected ground hit pixels. The parameters assessed include radar backscatter, interferometric coherence, surface scattering proportion (based on Freeman–Durden decomposition), and standard deviation of the interferometric height. The method is applied to Monks Wood, a small seminatural deciduous woodland in Cambridgeshire, U.K., using airborne E-SAR data collected in June 2000. The 1428 variations of SAR-derived terrain models are validated with theodolite data and a light detection and ranging-derived DTM. The results show that increasing the amount of data used in the DTM creation does not necessarily increase the accuracy of the final DTM. The most accurate method, for the whole wood, was a fixed-window minimum-filtering algorithm, followed by a mean filter. However, for a spatial subset of the area using the $upsilon_{3}$ backscattering coefficient to identify ground pixels outperforms the minimum filtering method. The findings suggest that backscatter information may often be undervalued in estimating terrain height under forest canopies.
机译:本文研究了极化干涉合成孔径雷达(InSAR)数据中不同参数在识别林地中地面像素时的效用,从而能够根据所选地面撞击像素的InSAR高度生成准确的数字地形模型(DTM)。评估的参数包括雷达反向散射,干涉相干性,表面散射比例(基于Freeman-Durden分解)和干涉高度的标准偏差。使用2000年6月收集的机载E-SAR数据,将该方法应用于英国剑桥郡的小型半天然落叶林Monks Wood。使用经纬仪数据以及光检测和测距功能验证了SAR衍生的地形模型的1428个变化,派生的DTM。结果表明,增加DTM创建中使用的数据量并不一定会提高最终DTM的准确性。对于整个木材,最准确的方法是固定窗口最小过滤算法,然后是均值过滤器。但是,对于使用$ upsilon_ {3} $反向散射系数来识别地面像素的区域空间子集,其性能优于最小滤波方法。研究结果表明,在估算森林冠层下的地形高度时,后向散射信息可能经常被低估。

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