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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Prediction of plot-level forest variables using TerraSAR-X stereo SAR data
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Prediction of plot-level forest variables using TerraSAR-X stereo SAR data

机译:使用TerraSAR-X立体SAR数据预测地块级森林变量

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摘要

Promising results have been obtained in recent years in the use of high-resolution X-band stereo SAR satellite images (with the spatial resolution being in order of meters) in the extraction of elevation data. In the case of forested areas, the extracted elevation values appear to be somewhere between the ground surface and the top of the canopy, depending on the forest characteristics. If the ground surface elevations are known by using a Digital Terrain Model derived from Airborne Laser Scanning surveys, it is possible to obtain information related to forest resources. To the best of our knowledge, this paper, presents the first attempt to obtain forest variables at plot level based on TerraSAR-X stereo SAR images (non-interferometric data). The study set consisted of 109 circular test plots for which forest variables were observed by performing tree-specific measurements. The statistical features were calculated for each test plot from the elevation values extracted from stereo SAR data. This was followed by predicting field-observed plot-level forest variables from the features derived from stereo SAR data using the Nearest Neighbors approach which employs the Random Forest technique in selection of the nearest neighbors. The relative errors (RMSE%) for predicting the stem volume, basal area, mean forest canopy height, and mean diameter values were 34.0%, 29.0%, 14.0%, and 19.7%, respectively. The results indicate that there was no clear saturation level in stem volume estimation. In this case study, stem volumes were predicted up to about 400m ~3/ha. In the light of these results, stereo SAR data appears to be an interesting remote-sensing technique for future forest inventories. For example, stereo SAR data could have high potential in forest inventories as the SAR-based features can be adapted to the methods currently used in inventories.
机译:近年来,在高程数据提取中使用高分辨率X波段立体声SAR卫星图像(空间分辨率为米的数量)已获得了可喜的结果。对于森林地区,根据森林的特性,提取的高程值似乎在地面与树冠顶部之间。如果使用从机载激光扫描勘测得出的数字地形模型来了解地面高程,则可以获得与森林资源有关的信息。据我们所知,本文首次提出了基于TerraSAR-X立体SAR图像(非干涉数据)在样地级获取森林变量的尝试。该研究集由109个圆形测试区组成,通过执行特定于树木的测量可观察到森林变量。根据从立体SAR数据中提取的高程值,为每个测试图计算统计特征。然后,使用“最近邻”方法根据从立体声SAR数据得出的特征预测现场观察到的样地级森林变量,该方法采用“随机森林”技术选择最近的邻居。预测茎量,基础面积,平均森林冠层高度和平均直径值的相对误差(RMSE%)分别为34.0%,29.0%,14.0%和19.7%。结果表明,茎体积估计中没有明确的饱和度水平。在此案例研究中,预计茎干体积可达约400m〜3 / ha。根据这些结果,立体声SAR数据似乎是未来森林资源清查的一种有趣的遥感技术。例如,立体SAR数据在森林清单中可能具有很高的潜力,因为基于SAR的功能可以适应清单中当前使用的方法。

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