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Published May 22, 2024 | Version v2
Dataset Open

Large-scale Forest Stand Height mapping for the northeast of U.S. and China using L-band spaceborne repeat-pass InSAR and GEDI

  • 1. ROR icon National Space Science Center

Contributors

Project leader:

Project member:

  • 1. ROR icon National Space Science Center
  • 2. ROR icon University of Massachusetts Amherst

Description

The forest height mosaic for the northeastern parts of China and U.S are generated based on a global-to-local inversion approach proposed in (Yu et al., 2023) by making use of Spaceborne repeat-pass InSAR and spaceborne GEDI data. The sparsely but extensively distributed LiDAR samples provided by NASA’s GEDI mission are used to parametrize the semi-empirical repeat-pass InSAR scattering model(Lei et al., 2017) and to obtain forest height estimates. Compared to our previous efforts (Lei et al., 2018, Lei and Siqueira, 2022), this paper further removes the assumptions that were made given the limited availability of calibration samples at that time, and developed a new inversion approach based on a global-to-local two-stage inversion scheme. This approach allows a better use of local GEDI samples to achieve finer characterization of temporal decorrelation pattern and thus higher accuracy of forest height inversion.  This approach is further fully automated to enable a large-scale forest mapping capability. Two forest height mosaic maps were generated for the entire northeastern regions of U.S. and China with total area of 18 million hectares and 112 million hectares, respectively. The validation of the forest height estimates demonstrates much improved accuracy achieved by the proposed approach compared to the previous efforts i.e., reducing from RMSE of 3-4 m on the order of 3-6-hectare aggregated pixel size to RMSE 3-4 m on the order of 0.81-hectare pixel size. The proposed fusion approach not only addresses the sparse spatial sampling problem inherent to the GEDI mission, but also improve the accuracy of forest height estimates compared to the GEDI-interpolated maps by a factor of 20% at 30-m resolution. The extensive evaluation of forest height inversion against LVIS LiDAR data indicates an accuracy 3-4 m on the order of 0.81 hectare over smooth areas and 4-5 m over hilly areas in U.S., whereas the forest height estimates over northeastern China are best compared with small footprint LiDAR validation data even at an accuracy of even below 3.5 m with R2 mostly above 0.6. Such a forest height inversion accuracy at sub-hectare pixel size provides promising values towards the existing and future spaceborne LiDAR (JAXA’s MOLI, NASA’s GEDI, China’s TECIS) and InSAR missions (NASA-ISRO’s NISAR, JAXA’s ALOS-4 and China’s LuTan-1). This fusion prototype can work as a cost-effective solution for public users to obtain a wall-to-wall forest height mapping at large scale when only spaceborne repeat-pass InSAR data are available and freely accessible.

Files

preview_china_FSH_mosaic.jpeg

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Additional details

Dates

Submitted
2024-05-08

Software

Repository URL
https://github.com/a787854/FSHv2
Programming language
Python, MATLAB, Cuda

References

  • LEI, Y. & SIQUEIRA, P. Refined forest stand height inversion approach with spaceborne repeat-pass l-band sar interferometry and gedi lidar data. IGARSS 2022-2022 IEEE International Geoscience and Remote Sensing Symposium, 2022. IEEE, 6388-6391.
  • LEI, Y., SIQUEIRA, P., TORBICK, N., DUCEY, M., CHOWDHURY, D. & SALAS, W. 2018. Generation of large-scale moderate-resolution forest height mosaic with spaceborne repeat-pass SAR interferometry and lidar. IEEE Transactions on Geoscience and Remote Sensing, 57, 770-787.
  • YU, Y., LEI, Y. & SIQUEIRA, P. Large-Scale Forest Height Mapping in the Northeastern U.S. using L-Band Spaceborne Repeat-Pass SAR Interferometry and GEDI LiDAR Data. IGARSS 2023 - 2023 IEEE International Geoscience and Remote Sensing Symposium, 16-21 July 2023 2023. 1760-1763.
  • LEI, Y., SIQUEIRA, P. & TREUHAFT, R. 2017. A physical scattering model of repeat-pass InSAR correlation for vegetation. Waves in Random and Complex Media, 27, 129-152.