Submitted:
11 September 2025
Posted:
12 September 2025
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Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Study Area

2.2. Field Data Collection Methods
2.3. Remote Sensing Data Processing
2.4. Ecotype Mapping
2.5. Assessment of Scattering Models
2.6. Assessment of Vegetation Structure Limitations
3. Results
3.1. Field Data
3.2. Ecotype Mapping: Can L-Band and S-Band polSAR Data be Used to Map Wetland Ecotypes with High Accuracy?
3.3. Assessment of Scattering Models: Do Established Scattering Models Explain Polarimetric L- and S- Band SAR Interactions with Wetlands?


3.4. Assessment of Vegetation Structure Limitations: What are the Vegetation Structure Limitations of Different Radar Wavelengths for Wetland Inundation?
4. Discussion
Limitations
5. Conclusions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| SAR | Synthetic Aperture Radar |
| NISAR | NASA-ISRO Synthetic Aperture Radar |
| PolSAR | Polarimetric SAR |
| CPD | Co-polarized phase difference |
| ASAR | Airborne Synthetic Aperture Radar |
| NASA | National Aeronautics and Space Administration |
| ISRO | Indian Space Research Organization |
| USFWS | United States Fish and Wildlife Service |
References
- Environment Canada Where land meets water: understanding wetlands of the Great Lakes; Environment Canada, 2002.
- Gronewold, A. D.; Rood, R. B. Recent Water Level Changes across Earth’s Largest Lake System and Implications for Future Variability. Journal of Great Lakes Research 2019, 45(1), 1–3. [Google Scholar] [CrossRef]
- Atwood, D.; Battaglia, M.; Bourgeau-Chavez, L.; Ahern, F.; Murnaghan, K.; Brisco, B. Exploring Polarimetric Phase of Microwave Backscatter from Typha Wetlands. Canadian Journal of Remote Sensing 2020, 46(1), 49–66. [Google Scholar] [CrossRef]
- Ahern, F. J.; Brisco, B.; Battaglia, M. J.; L. Bourgeau-Chavez; Atwood, D.; K. Murnaghan. SAR Polarimetric Phase Differences in Wetlands: Information and Mis-Information. Canadian Journal of Remote Sensing 2022, 48 (6), 703–721. [CrossRef]
- Ahern, F.; Brisco, B.; Murnaghan, K.; Lancaster, P.; Atwood, D. K. Insights into Polarimetric Processing for Wetlands from Backscatter Modeling and Multi-Incidence Radarsat-2 Data. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing 2018, 11(9), 3040–3050. [Google Scholar] [CrossRef]
- Hong, S.-H.; Shimon Wdowinski. Double-Bounce Component in Cross-Polarimetric SAR from a New Scattering Target Decomposition. IEEE Transactions on Geoscience and Remote Sensing 2013, 52 (6), 3039–3051. [CrossRef]
- Siqueira, P. L- and S-Band Polarimetric Data Collections by ISRO’s ASAR Instrument in Support of NISAR Ecosystems Algorithm Development. IGARSS 2022–2022 IEEE International Geoscience and Remote Sensing Symposium 2022, 7468–7470. [CrossRef]
- Albert, D. A. Between Land and Lake: Michigan’s Great Lakes Coastal Wetlands; Michigan Natural Features Inventory, 2003.
- Wilcox, D.A, Thompson, T.A., Booth, R.K., and Nicholas, J.R.; Lake-level variability and water availability in the Great Lakes; Circular 1311; U.S. Geological Survey 2007 https://pubs.usgs.gov/circ/2007/1311/pdf/circ1311_web.pdf.
- Tilley, D. Plant guide for hardstem bulrush (Schoenoplectus acutus), 2012.
- Reznicek, A. A.; Voss, E. G.; Walters, B. S. University of Michigan. https://michiganflora.net/genus/schoenoplectus (accessed 2024-01-26).
- Battaglia, M. J.; Banks, S.; Amir Behnamian; Bourgeau-Chavez, L.; Brisco, B.; Corcoran, J.; Chen, Z.; Huberty, B.; Klassen, J.; Knight, J.; Morin, P.; Murnaghan, K.; Pelletier, K.; White, L. Multi-Source EO for Dynamic Wetland Mapping and Monitoring in the Great Lakes Basin. Remote Sensing 2021, 13 (4), 599–599. [CrossRef]
- Bourgeau-Chavez, L. L.; Graham, J.; Battaglia, M. J.; White, L.; Klassen, J.; Vander Bilt, D. L.; Poley, A. F.; Pelletier, K.; Brisco, B.; Huberty, B. Great Lakes Remote Sensing ESRI Storymap, High resolution monitoring of coastal Great Lakes wetlands in 4D, 2021. https://mtu.maps.arcgis.com/apps/MapSeries/index.html?appid=2d06583e97844ea892413e2290cbe885.
- Jakob van Zyl; Motofumi Arii; Kim, Y. Model-Based Decomposition of Polarimetric SAR Covariance Matrices Constrained for Nonnegative Eigenvalues. 2011, 49 (9), 3452–3459. [CrossRef]
- Freeman, A.; Durden, S. L. A Three-Component Scattering Model for Polarimetric SAR Data. IEEE Transactions on Geoscience and Remote Sensing 1998, 36(3), 963–973. [Google Scholar] [CrossRef]
- Cloude, S. R.; Pottier, E. An Entropy Based Classification Scheme for Land Applications of Polarimetric SAR. IEEE Transactions on Geoscience and Remote Sensing 1997, 35(1), 68–78. [Google Scholar] [CrossRef]
- Neumann, M.; Laurent Ferro-Famil; Jager, M.; Reigber, A.; Pottier, E. A Polarimetric Vegetation Model to Retrieve Particle and Orientation Distribution Characteristics. HAL (Le Centre pour la Communication Scientifique Directe) 2009. [CrossRef]
- Breiman, L. Random Forests. Machine Learning 2001, 45(1), 5–32. [Google Scholar] [CrossRef]
- Adeli, S.; Salehi, B.; Mahdianpari, M.; Quackenbush, L. J.; Chapman, B. Moving toward L-Band NASA-ISRO SAR Mission (NISAR) Dense Time Series: Multipolarization Object-Based Classification of Wetlands Using Two Machine Learning Algorithms. Earth and Space Science 2021, 8 (11). [CrossRef]
- Yamaguchi, Y.; Moriyama, T.; Ishido, M.; Yamada, H. Four-Component Scattering Model for Polarimetric SAR Image Decomposition. IEEE Transactions on Geoscience and Remote Sensing 2005, 43(8), 1699–1706. [Google Scholar] [CrossRef]
- Mahdianpari, M.; Granger, J. E.; Mohammadimanesh, F.; Salehi, B.; Brisco, B.; Homayouni, S.; Gill, E.; Huberty, B.; Lang, M. Meta-Analysis of Wetland Classification Using Remote Sensing: A Systematic Review of a 40-Year Trend in North America. Remote Sensing 2020, 12(11), 1882. [Google Scholar] [CrossRef]
- Bourgeau-Chavez, L.; Endres, S.; Battaglia, M.; Miller, M.; Banda, E.; Laubach, Z.; Higman, P.; Chow-Fraser, P.; Marcaccio, J. Development of a Bi-National Great Lakes Coastal Wetland and Land Use Map Using Three-Season PALSAR and Landsat Imagery. Remote Sensing 2015, 7(7), 8655–8682. [Google Scholar] [CrossRef]
- Zhang, X.; Xu, J.; Chen, Y.; Xu, K.; Wang, D. Coastal Wetland Classification with GF-3 Polarimetric SAR Imagery by Using Object-Oriented Random Forest Algorithm. Sensors 2021, 21(10), 3395. [Google Scholar] [CrossRef] [PubMed]
- Fu, B.; Li, H.; Liu, M.; Yao, H.; Gao, E.; Sun, W.; Zhang, S.; Fan, D. Performance Evaluation of Backscattering Coefficients and Polarimetric Decomposition Parameters for Marsh Vegetation Mapping Using Multi-Sensor and Multi-Frequency SAR Images. Ecological Indicators 2023, 157, 111246. [Google Scholar] [CrossRef]
- Lamb, B. T.; McDonald, K. C.; Tzortziou, M. A.; Tesser, D. S. Characterizing Tidal Marsh Inundation with Synthetic Aperture Radar, Radiometric Modeling, and in Situ Water Level Observations. Remote Sensing 2025, 17(2), 263–263. [Google Scholar] [CrossRef]
- Byrd, K. B.; Ballanti, L.; Thomas, N.; Nguyen, D.; Holmquist, J. R.; Simard, M.; Windham-Myers, L. A Remote Sensing-Based Model of Tidal Marsh Aboveground Carbon Stocks for the Conterminous United States. ISPRS Journal of Photogrammetry and Remote Sensing 2018, 139, 255–271. [Google Scholar] [CrossRef]
- Kumar, S. Polarimetric Distortion Analysis of L- and S-Band Airborne SAR (LS-ASAR): A Precursor Study of the Spaceborne Dual-Frequency L- and S-Band NASA ISRO Synthetic Aperture Radar (NISAR) Mission. 2022. [CrossRef]







| Study Area | Veg Type | n sites | Avg. Height (m) | Avg. Density (stems/m2) | Avg. Stem Diameter (cm2) | Avg. Live Biomass (g/m2) | Min. Live Biomass (g/m2) | Max. Live Biomass (g/m2) | Avg. Dead Biomass (g/m2) | Min. Dead Biomass (g/m2) | Max. Dead Biomass (g/m2) |
|---|---|---|---|---|---|---|---|---|---|---|---|
| St. Clair | Typha | 10 | 2.17 | 20.60 | 1.66 | 1495.6 | 106.7 | 3227.6 | 1405.4 | 482.5 | 3770.3 |
| St. Clair | Phrag | 14 | 2.05 | 37.98 | 0.81 | 1082.7 | 61.8 | 7336.5 | 2232.8 | 28.1 | 9755.4 |
| St. Clair | Schoeno | 7 | 1.96 | 13.80 | 1.00 | 70.9 | 16.2 | 136.9 | 0.0 | 0.0 | 0.0 |
| Erie | Typha | 11 | 1.80 | 28.06 | 1.57 | 1546.8 | 244.6 | 244.6 | 444.9 | 61.5 | 1022.8 |
| Erie | Phrag | 2 | 2.89 | 44.09 | 1.04 | 2667.27 | 803.75 | 4530.79 | 553.70* | 553.70* | 553.70* |
| Erie | Schoeno | 2 | 1.36 | 194.9 | 0.78 | 562.4 | 222.20 | 902.5 | 5.14 | 0.0 | 10.3 |
| Classification Map Bands | OA | UA range | PA range | Phrag UA | Phrag PA | Schoen UA | Schoen PA | Typha UA | Typha PA | Wetland UA | Wetland PA |
|---|---|---|---|---|---|---|---|---|---|---|---|
| S-band | 77 | 53-93 | 18-99 | 64 | 74 | 92 | 44 | 94 | 89 | 61 | 18 |
| L-band | 83 | 55-97 | 35-98 | 75 | 78 | 97 | 45 | 95 | 91 | 78 | 39 |
| S- and L-band | 92 | 74-98 | 46-99 | 79 | 89 | 99 | 73 | 96 | 94 | 85 | 89 |
| R-2/WV 2019 | 83 | 61-97 | 55-97 | 81 | 95 | 96 | 97 | 97 | 95 | 85 | 85 |
| Classification Map Bands | OA | UA range | PA range | Phrag UA | Phrag PA | Schoen UA | Schoen PA | Typha UA | Typha PA | Wetland UA | Wetland PA |
|---|---|---|---|---|---|---|---|---|---|---|---|
| S-band | 45 | 28-82 | 8-94 | 82 | 30 | 82 | 17 | 82 | 56 | 34 | 8 |
| L-band | 72 | 44-99 | 9-97 | 30 | 9 | 99 | 56 | 81 | 82 | 65 | 26 |
| S- and L-band | 76 | 54-97 | 38-98 | 85 | 38 | 97 | 44 | 90 | 81 | 75 | 21 |
| R-2/WV 2019 | 81 | 61–99 | 66-100 | 98 | 100 | 82 | 75 | 85 | 89 | 85 | 89 |
| Target | C-band | S-band | L-band |
|---|---|---|---|
| Open Water | 9392.19 | 9799.19 | 10827.99 |
| Flooded Vegetation | 5618.20 | 4514.11 | 4374.06 |
| Total | 15010.39 | 14313.31 | 15202.05 |
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