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Predictions of Biomass Change in a Hemi-Boreal Forest Based on Multi-Polarization L- and P-Band SAR Backscatter

机译:基于多极化L-和P波段SAR反向散射的基于多极化林的生物质变化预测

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摘要

Above-ground biomass change accumulated during four growth seasons in a hemi-boreal forest was predicted using airborne L- and P-band synthetic aperture radar (SAR) backscatter. The radar data were collected in the BioSAR 2007 and BioSAR 2010 campaigns over the Remningstorp test site in southern Sweden. Regression models for biomass change were developed from biomass maps created using airborne LiDAR data and field measurements. To facilitate training and prediction on image pairs acquired at different dates, a backscatter offset correction method for L-band data was developed and evaluated. The correction, based on the HV/VV backscatter ratio, facilitated predictions across image pairs almost identical to those obtained using data from the same image pair for both training and prediction. For P-band, previous positive results using an offset correction based on the HH/VV ratio were validated. The best L-band model achieved a root mean square error (RMSE) of 21 t/ha, and the best P-band model achieved an RMSE of 19 t/ha. Those accuracies are similar to that of the LiDAR-based biomass change of 18 t/ha. The limitation of using LiDARbased data for training was considered. The findings demonstrate potential for improved biomass change predictions from L-band backscatter despite varying environmental conditions and calibration uncertainties.
机译:使用空气传播的L和P波段合成孔径雷达(SAR)反向散射预测在半北森林中的四个生长季节中积累的地上生物质变化。雷达数据在Biosar 2007和Biosar 2010中收集,在瑞典南部的Rem Ondertorp测试网站上进行了竞选活动。生物质变化的回归模型是从使用空机激光雷达数据和现场测量创建的生物量图开发的。为了促进在不同日期获得的图像对的训练和预测,开发和评估了L波段数据的反向散射偏移校正方法。基于HV / VV反向散射比的校正,跨图像对的便利预测几乎与使用来自相同图像对的数据进行训练和预测获得的预测。对于p波段,验证了使用基于HH / VV比率的偏移校正的先前的正结果。最佳L波段模型实现了21T / ha的根均方误差(RMSE),最佳的P波段模型达到了19吨/公顷的RMSE。这些准确性类似于LIDAR的基于LIDAR的生物质变化为18t / ha。考虑了使用LIDARBASED数据进行培训的限制。这些发现表明,尽管不同的环境条件和校准不确定性不同,但是从L波段反向散射改善预测的可能性。

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  • 来源
    《Canadian Journal of Remote Sensing》 |2020年第6期|661-680|共20页
  • 作者单位

    Department of Forest Resource Management Swedish University of Agricultural Sciences Umea Sweden;

    Department of Forest Resource Management Swedish University of Agricultural Sciences Umea Sweden;

    MJ Soja Consulting Hobart Tasmania Australia School of Technology Environments and Design University of Tasmania Hobart Tasmania Australia;

    Department of Forest Resource Management Swedish University of Agricultural Sciences Umea Sweden;

    Department of Space Earth and Environment Chalmers University of Technology Gothenburg Sweden;

    Department of Forest Resource Management Swedish University of Agricultural Sciences Umea Sweden;

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