Vol. 90
Latest Volume
All Volumes
PIERB 105 [2024] PIERB 104 [2024] PIERB 103 [2023] PIERB 102 [2023] PIERB 101 [2023] PIERB 100 [2023] PIERB 99 [2023] PIERB 98 [2023] PIERB 97 [2022] PIERB 96 [2022] PIERB 95 [2022] PIERB 94 [2021] PIERB 93 [2021] PIERB 92 [2021] PIERB 91 [2021] PIERB 90 [2021] PIERB 89 [2020] PIERB 88 [2020] PIERB 87 [2020] PIERB 86 [2020] PIERB 85 [2019] PIERB 84 [2019] PIERB 83 [2019] PIERB 82 [2018] PIERB 81 [2018] PIERB 80 [2018] PIERB 79 [2017] PIERB 78 [2017] PIERB 77 [2017] PIERB 76 [2017] PIERB 75 [2017] PIERB 74 [2017] PIERB 73 [2017] PIERB 72 [2017] PIERB 71 [2016] PIERB 70 [2016] PIERB 69 [2016] PIERB 68 [2016] PIERB 67 [2016] PIERB 66 [2016] PIERB 65 [2016] PIERB 64 [2015] PIERB 63 [2015] PIERB 62 [2015] PIERB 61 [2014] PIERB 60 [2014] PIERB 59 [2014] PIERB 58 [2014] PIERB 57 [2014] PIERB 56 [2013] PIERB 55 [2013] PIERB 54 [2013] PIERB 53 [2013] PIERB 52 [2013] PIERB 51 [2013] PIERB 50 [2013] PIERB 49 [2013] PIERB 48 [2013] PIERB 47 [2013] PIERB 46 [2013] PIERB 45 [2012] PIERB 44 [2012] PIERB 43 [2012] PIERB 42 [2012] PIERB 41 [2012] PIERB 40 [2012] PIERB 39 [2012] PIERB 38 [2012] PIERB 37 [2012] PIERB 36 [2012] PIERB 35 [2011] PIERB 34 [2011] PIERB 33 [2011] PIERB 32 [2011] PIERB 31 [2011] PIERB 30 [2011] PIERB 29 [2011] PIERB 28 [2011] PIERB 27 [2011] PIERB 26 [2010] PIERB 25 [2010] PIERB 24 [2010] PIERB 23 [2010] PIERB 22 [2010] PIERB 21 [2010] PIERB 20 [2010] PIERB 19 [2010] PIERB 18 [2009] PIERB 17 [2009] PIERB 16 [2009] PIERB 15 [2009] PIERB 14 [2009] PIERB 13 [2009] PIERB 12 [2009] PIERB 11 [2009] PIERB 10 [2008] PIERB 9 [2008] PIERB 8 [2008] PIERB 7 [2008] PIERB 6 [2008] PIERB 5 [2008] PIERB 4 [2008] PIERB 3 [2008] PIERB 2 [2008] PIERB 1 [2008]
2021-01-14
Electromagnetic Simulation for Estimation of Forest Vertical Structure Using PolSAR Data
By
Progress In Electromagnetics Research B, Vol. 90, 129-150, 2021
Abstract
A novel method for the estimation of a forest vertical structure using Polarimetric Synthetic Aperture Radar (PolSAR) data only without the need to interferometry data is proposed in the present paper. Electromagnetic (EM) simulation is used to develop the proposed method, where the SAR pulse is simulated as a plane wave incident in the direction of the side looking angle of the SAR. For this purpose, the forest canopy layer is modeled as clouds of randomly oriented thin straight dipoles which are randomly distributed within an inclined prism volume, whereas the forest soil surface is modeled as a random rough surface. This prism has a horizontal rectangular base and parallelogram sides parallel to the direction of the incident plane wave (side looking angle of the SAR). The proposed method aims to estimate the average height of the canopy layer above the soil surface, the canopy layer thickness and the roughness of the forest ground surface. The proposed method is based on the Radar Vegetation Index (RVI) and the normalized Radar Cross Section (RCS) calculated from the PolSAR data and their relevance to the parameters of the forest vertical structure. Some examples are presented to demonstrate the capability of the proposed method using some PolSAR images obtained through EM simulation of the scattering from forest regions and by applying the theorem of SAR target composition with the Multiple Component Scattering Model (MCSM). The phase differences between the components of scattering obtained from the solution of the SAR target decomposition problem are used in the estimation process. The accuracy of the proposed method is assessed by calculating the percentage error of the estimated vertical structure and ground roughness for each resolution cell of the simulated forest region. It is shown that the percentage errors of the estimated parameters are very low, which reflects the accuracy and efficiency of the proposed method.
Citation
Shimaa Ahmed Megahed Soliman, Khalid Fawzy Ahmed Hussein, and Abd-El-Hadi A. Ammar, "Electromagnetic Simulation for Estimation of Forest Vertical Structure Using PolSAR Data," Progress In Electromagnetics Research B, Vol. 90, 129-150, 2021.
doi:10.2528/PIERB20110802
References

1. Miner, R., "Impact of the global forest industry on atmospheric greenhouse gases," Forestry, Food and Agriculture Organization of the United Nations, Rome, 2010.

2. Brigot, G., M. Simard, E. Colin-Koeniguer, and A. Boulch, "Retrieval of forest vertical structure from PolInSAR data by machine learning using LIDAR-derived features," Remote Sensing, Vol. 11, No. 4, 381, 2019.
doi:10.3390/rs11040381

3. Cloude, S. R. and K. P. Papathanassiou, "Three-stage inversion process for polarimetric SAR interferometry," IEE Proceedings — Radar, Sonar and Navigation, Vol. 150, No. 3, 125-134, 2003.
doi:10.1049/ip-rsn:20030449

4. Neumann, M., L. Ferro-Famil, and A. Reigber, "Estimation of forest structure, ground, and canopy layer characteristics from multibaseline polarimetric interferometric SAR data," IEEE Transactions on Geoscience and Remote Sensing, Vol. 48, No. 3, 1086-1104, 2009.
doi:10.1109/TGRS.2009.2031101

5. Mette, T., F. Kugler, K. Papathanassiou, and I. Hajnsek, "Forest and the random volume over ground-nature and effect of 3 possible error types," European Conference on Synthetic Aperture Radar (EUSAR), 1-4, VDE Verlag GmbH, 2006.

6. Zhou, Y.-S., W. Hong, and F. Cao, "An improvement of vegetation height estimation using multi-baseline polarimetric interferometric SAR data," PIERS Online, Vol. 5, No. 1, 6-10, 2009.
doi:10.2529/PIERS080907033305

7. Kim, Y. and J. Zyl, "Comparison of forest estimation techniques using SAR data," Proc. IEEE IGARSS Conf., 1395-1397, 2001.

8. Kim, Y., T. Jackson, R. Bindlish, S. Hong, G. Jung, and K. Lee, "Retrieval of wheat growth parameters with radar vegetation indices," IEEE Geoscience and Remote Sensing Letters, Vol. 11, No. 4, 808-812, 2014.
doi:10.1109/LGRS.2013.2279255

9. Huang, Y., J. P. Walker, Y. Gao, X. Wu, and A. Monerris, "Estimation of vegetation water content from the radar vegetation index at L-band," IEEE Transactions on Geoscience and Remote Sensing, Vol. 54, No. 2, 981-989, 2016.
doi:10.1109/TGRS.2015.2471803

10. Szigarski, T. Jagdhuber, M. Bau, C. Thiel, M. Parrens, J. Wignero, M. Piles, and D. Entekhabi, "Analysis of the radar vegetation index and potential improvements," Remote Sensing, Vol. 10, No. 11, 1776, 2018.
doi:10.3390/rs10111776

11. Soliman, S. A. M., K. F. A. Hussein, and A.-E.-H. A. Ammar, "Electromagnetic resonances of natural grasslands and their effects on radar vegetation index," Progress In Electromagnetics Research B, Vol. 86, 19-38, 2020.
doi:10.2528/PIERB19080702

12. Papathanassiou, K. P. and S. R. Cloude, "Single-baseline polarimetric SAR interferometry," IEEE Transactions on Geoscience and Remote Sensing, Vol. 39, No. 11, 2352-2363, 2001.
doi:10.1109/36.964971

13. Brandfass, M., C. Hofmann, J. C. Mura, J. R. Moreira, and K. P. Papathanassiou, "Parameter estimation of rain forest vegetation via polarimetric radar interferometric data," SAR Image Analysis, Modeling, and Techniques IV, Vol. 4543, 169-179, International Society for Optics and Photonics, January 200.

14. Cloude, S. R., K. P. Papathanassiou, I. Woodhouse, J. Hope, J. C. Suarez Minguez, P. E. Osborne, and G. Wright, "The Glen Affric radar project: Forest mapping using polarimetric interferometry," IGARSS 2001, Scanning the Present and Resolving the Future, Proceedings, IEEE 2001 International Geoscience and Remote Sensing Symposium (Cat. No.01CH37217), 2001.

15. Sarabandi, K. and Y. C. Lin, "Simulation of interferometric SAR response for characterizing the scattering phase center statistics of forest canopies," IEEE Transactions on Geoscience and Remote Sensing, Vol. 38, No. 1, 115-125, 2000.
doi:10.1109/36.823906

16. Yang, H., D. Liu, G. Sun, Z. Guo, and Z. Zhang, "Simulation of interferometric SAR response for characterizing forest successional dynamics," IEEE Geoscience and Remote Sensing Letters, Vol. 11, No. 9, 1529-1533, 2014.
doi:10.1109/LGRS.2014.2298431

17. Freeman, A. and S. L. Durden, "A three-component scattering model for polarimetric SAR data," IEEE Transactions on Geoscience and Remote Sensing, Vol. 36, No. 3, 963-973, 1998.
doi:10.1109/36.673687

18. Yamaguchi, Y., T. Moriyama, M. Ishido, and H. Yamada, "Four-component scattering model for polarimetric SAR image decomposition," IEEE Transactions on Geoscience and Remote Sensing, Vol. 43, No. 8, 1699-1706, 2005.
doi:10.1109/TGRS.2005.852084

19. Zhang, L., B. Zou, H. Cai, and Y. Zhang, "Multiple-component scattering model for polarimetric SAR image decomposition," IEEE Geoscience and Remote Sensing Letters, Vol. 5, No. 4, 603-607, 2008.
doi:10.1109/LGRS.2008.2000795

20. Cloude, S. R. and E. Pottier, "A review of target decomposition theorems in radar polarimetry," IEEE Transactions on Geoscience and Remote Sensing, Vol. 34, No. 2, 498-518, Mar. 1996.
doi:10.1109/36.485127

21. Maıtre, H., Processing of Synthetic Aperture Radar (SAR) Images, John Wiley & Sons, 2013.