首页> 外文会议>International Symposium on Remote Sensing of Environment >COMPARISON OF TANDEM-X INSAR AND TERRASAR-X STEREO-RADARGRAMMETRIC 3D METRICS IN MAPPING OF FOREST RESOURCES
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COMPARISON OF TANDEM-X INSAR AND TERRASAR-X STEREO-RADARGRAMMETRIC 3D METRICS IN MAPPING OF FOREST RESOURCES

机译:Tandem-X Insar和Terrasar-x立体声射程测图3D指标的比较林资资源映射

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Accurate forest resources maps are needed in diverse applications ranging from the local forest management to the global climate change research. In particular, it is important to have tools to map changes in forest resources, which helps us to understand the significance of the forest biomass changes in the global carbon cycle. In the task of mapping changes in forest resources for wide areas, Earth Observing satellites could play the key role. In 2013, an EU/FP7-Space funded project "Advanced_SAR" was started with the main objective to develop novel forest resources mapping methods based on the fusion of satellite based 3D measurements and in-situ field measurements of forests. During the summer 2014, an extensive field surveying campaign was carried out in the Evo test site, Southern Finland. Forest inventory attributes of mean tree height, basal area, mean stem diameter, stem volume, and biomass, were determined for 91 test plots having the size of 32 by 32 meters (1024 m~2). Simultaneously, a comprehensive set of satellite and airborne data was collected. Satellite data also included a set of TanDEM-X (TDX) and TerraSAR-X (TSX) X-band synthetic aperture radar (SAR) images, suitable for interferometric and stereo-radargrammetric processing to extract 3D elevation data representing the forest canopy. In the present study, we compared the accuracy of TDX InSAR and TSX stereo-radargrammetric derived 3D metrics in forest inventory attribute prediction. First, 3D data were extracted from TDX and TSX images. Then, 3D data were processed as elevations above the ground surface (forest canopy height values) using an accurate Digital Terrain Model (DTM) based on airborne laser scanning survey. Finally, 3D metrics were calculated from the canopy height values for each test plot and the 3D metrics were compared with the field reference data. The Random Forest method was used in the forest inventory attributes prediction. Based on the results InSAR showed slightly better performance in forest attribute (i.e. mean tree height, basal area, mean stem diameter, stem volume, and biomass) prediction than stereo-radargrammetry. The results were 20.1% and 28.6% in relative root mean square error (RMSE) for biomass prediction, for TDX and TSX respectively.
机译:在各种应用中,从当地森林管理到全球气候变化研究的不同应用中需要准确的森林资源地图。特别是,有工具可以映射森林资源的变化,这有助于我们了解森林生物量变化在全球碳循环中的重要性。在广泛领域的森林资源变化的任务中,地球观察卫星可以发挥关键作用。 2013年,欧盟/ FP7空间资助项目“Advanced_SAR”首先,主要目的是开发基于卫星3D测量的融合的新型森林资源映射方法和森林的原位现场测量。在2014年夏季,在芬兰南部Evo测试网站进行了广泛的现场测量活动。为平均树高,基底面积,平均茎直径,茎体积和生物质的森林库存属性被测定为32×32米(1024m〜2)的91个试验图。同时,收集了一系列综合卫星和空中数据。卫星数据还包括一组TANDEM-X(TDX)和TERRASAR-X(TSX)X波段合成孔径雷达(SAR)图像,适用于干涉管和立体射线测量处理,以提取代表森林冠层的3D高度数据。在本研究中,我们比较了森林清单属性预测中TDX Insar和TSX立体声雷达格衍生3D度量的准确性。首先,从TDX和TSX图像中提取3D数据。然后,使用基于机载激光扫描调查的精确数字地形模型(DTM)将3D数据作为地面(森林冠层高度值)的高度处理。最后,从每个测试曲线的顶层高度值计算3D度量,并将3D度量与现场参考数据进行比较。随机森林方法用于森林库存属性预测。基于结果,速度在森林属性中表现出略微更好的性能(即平均树高,基部区域,平均茎直径,茎体积和生物质)预测而不是立体射程测量。对于TDX和TSx,结果分别为生物量预测的相对根均方误差(RMSE)的20.1%和28.6%。

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