An Adaptive Method for the Estimation of Snow-Covered Fraction with Error Propagation for Applications from Local to Global Scales
Abstract
:1. Introduction
1.1. Background
1.2. Previous Work
1.3. Limitations of Existing Methods
1.4. Objective
2. Data and Methodology
2.1. Input Data
2.2. Methodology
2.2.1. Pre-Processing
2.2.2. Local Endmember Selection
2.2.3. Locally Adaptive MultiSpectral Unmixing
2.2.4. Post-Processing
2.3. Validation of LAMSU SCF Estimates
3. Results
3.1. Validation with WorldView-2/3 Imagery
3.2. High-Resolution Sensor Application
3.3. Medium-Resolution Sensor Application and Intercomparison
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. Dataset Details
Appendix A.1. LAMSU Input, Validation and Intercomparison Datasets
№ | Scene ID | Date |
---|---|---|
1 | S2A_MSIL1C_20200401T102021_N0209_R065_T32TPS_20200401T123732 | 1 April 2020 |
2 | S2A_MSIL1C_20200401T102021_N0209_R065_T32TPT_20200401T123732 | 1 April 2020 |
3 | S2B_MSIL1C_20200403T100549_N0209_R022_T32TNR_20200403T130157 | 3 April 2020 |
4 | S2B_MSIL1C_20200403T100549_N0209_R022_T32TNS_20200403T130157 | 3 April 2020 |
5 | S2B_MSIL1C_20200403T100549_N0209_R022_T32TPR_20200403T130157 | 3 April 2020 |
6 | S2B_MSIL1C_20200403T100549_N0209_R022_T32TPS_20200403T130157 | 3 April 2020 |
7 | S2B_MSIL1C_20200403T100549_N0209_R022_T32TPT_20200403T130157 | 3 April 2020 |
8 | LC08_L1TP_190027_20200402_20200822_02_T1 | 2 April 2020 |
9 | LC08_L1TP_190028_20200402_20200822_02_T1 | 2 April 2020 |
10 | S3B_OL_1_EFR_20200402T094445_20200402T094745_20200403T130637_0180_037_193_2160_LN1_O_NT_002 | 2 April 2020 |
S3B_SL_1_RBT_20200402T094445_20200402T094745_20200403T145347_0180_037_193_2160_LN2_O_NT_004 | ||
11 | SVI01_npp_d20200402_t1138030_e1143434_b43685_ c20200402154344482690_nobc_ops | 2 April 2020 |
SVI02_npp_d20200402_t1138030_e1143434_b43685_ c20200402154344489621_nobc_ops | ||
SVM04_npp_d20200402_t1138030_e1143434_b43685_ c20200402154344475375_nobc_ops | ||
SVM10_npp_d20200402_t1138030_e1143434_b43685_ c20200402154344428499_nobc_ops | ||
SVM11_npp_d20200402_t1138030_e1143434_b43685_ c20200402154344434443_nobc_ops | ||
13 | MOD021KM.A2020093.1050.061.2020093191243 | 2 April 2020 |
Ref. № | WorldView Scene ID | |||||
---|---|---|---|---|---|---|
Date | Bands | Resolution | Location | Center Longitude, Latitude | Solar Elevation Angle | |
Comparison № Landsat 8/Sentinel 2 Scene ID Snow-Free Snow | ||||||
1 | WV2_OPER_WV1_4B__2A_20150626T130722_N65-304_W018-337_0001_v0100 | |||||
26-06-2015 | 4 | 2 m × 2 m | Eyjafjarðarsveit, Iceland | −18.3362, 65.3035 | 48.2 | |
1 LC08_L1TP_220014_20150626_20200909_02_T 174.8% 25.2% | ||||||
2 | WV2_OPER_WV1_4B__2A_20200827T101318_N45-537_E007-279_0001_v0100 | |||||
27-08-2020 | 3 | 0.5 m × 0.5 m | Aosta Valley, Italy | 7.2800, 45.5375 | 50.6 | |
1 LC08_L1TP_195028_20200827_20200905_02_T 149.0% 51.0% 2 S2B_MSIL1C_20200827T102559_N0209_R108_T32TLR 32.6% 67.4% | ||||||
3 | WV2_OPER_WV1_4B__2A_20210806T103439_N45-541_E007-314_0001_v0100 | |||||
06-08-2021 | 3 | 0.4 m × 0.4 m | Aosta Valley, Italy | 7.3138, 45.5414 | 58.4 | |
1 S2B_MSIL1C_20210809T101559_N0301_R065_T32TLR 75.5% 24.5% | ||||||
4 | WV3_OPER_WV1_4B__2A_20200623T104458_N45-538_E007-317_0001_v0100 | |||||
23-06-2020 | 3 | 0.3 m × 0.3 m | Aosta Valley, Italy | 7.3171, 45.5388 | 66.0 | |
1 LC08_L1TP_195028_20200624_20200824_02_T1 12.6% 87.4% 2 S2A_MSIL1C_20200623T103031_N0209_R108_T32TLR 12.4% 87.6% | ||||||
5 | WV3_OPER_WV1_8B__2A_20201122T104312_N45-409_E007-036_0001_v0100 | |||||
22-11-2020 | 8 | 1.2 m × 1.2 m | Val-d’Isère, France | 7.0381, 45.4096 | 24.0 | |
1 S2B_MSIL1C_20201125T103349_N0209_R108_T32TLR 39.0% 61.0% |
Appendix A.2. Worldview-2/3 Classification
Appendix B. LAMSU SCF Examples
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Satellite | Sensor | Bands |
---|---|---|
Sentinel-2 A/B | MSI | 2, 3, 4, 8 (10 m) 5, 6, 7, 8A, 11, 12 (20 m) 1, 9, 10 (60 m) |
Landsat 8/9 | OLI(-2) | 8 (15 m) 1, 2, 3, 4, 5, 6, 7, 9 (30 m) |
Sentinel-3 A/B | OLCI | Oa01, Oa02, Oa03, Oa04, Oa05, Oa06, Oa07, Oa08, Oa09, Oa10, Oa11, Oa12, Oa13, Oa14, Oa15, Oa16, Oa17, Oa18, Oa19, Oa20, Oa21 (300 m) |
Sentinel-3 A/B | SLSTR | S1, S2, S3, S4, S5, S6 (500 m) |
Suomi NPP | VIIRS | i01, i02 (375 m) m04, m10, m11 (750 m) |
Terra | MODIS | 1, 2 (250 m) 3, 4, 5, 6, 7 (500 m) (all bands are also available as aggregated 1 km products) |
WorldView-2 | WV110 | panchromatic (1) (0.41 m) multispectral (8) (1.64 m) |
WorldView-3 | WV110 | panchromatic (1) (0.31 m) multispectral (8) (1.24 m) |
№ | Spectral Index | Characteristic |
---|---|---|
1 | Increases with snow presence and shade. This index is also known as the NDSI [15]. | |
2 | Increases with vegetation presence and decreases within shade. This index is also known as the NDVI [45]. | |
3 | Increases with vegetation presence and decreases within shade. This index is also known as the two-band EVI [46]. | |
4 | Increases with snow presence but is more robust and sensitive to snow in the shade than NDSI. | |
5 | Same as (4) but is less sensitive to vegetation. | |
6 | Same as (4) but is more sensitive to shade than snow. | |
7 | Same as (4) but is less sensitive to snow. | |
8 | Increases with shade and is close to zero for snow. | |
9 | Increases with snow presence and shade. Slightly lower sensitivity to snow presence and shade than (1). | |
10 | Increases with snow presence and shade. Lower sensitivity to snow presence and shade (in particular in illuminated areas) than (1). | |
11 | Increases with snow presence and shade. Lower sensitivity to snow presence and shade (in particular in illuminated areas) than (1). |
LAMSU | FRA6T [17] | |||||
---|---|---|---|---|---|---|
Reference № | L8/S2 | Bias (%) | RMSE (%) | Bias (%) | RMSE (%) | N (#) |
1 | L8 | −3.30 | 10.80 | 4.12 | 13.54 | 29652 |
2 | L8 | 8.10 | 21.45 | 17.37 | 35.20 | 18203 |
S2 | 3.85 | 18.56 | 7.92 | 25.09 | 12327 | |
3 | S2 | 0.62 | 16.79 | 8.36 | 26.21 | 102602 |
4 | L8 | 0.42 | 9.30 | 3.37 | 13.18 | 13115 |
S2 | 0.87 | 10.10 | 4.33 | 14.38 | 45732 | |
5 | S2 | −1.95 | 14.17 | 9.87 | 27.59 | 84644 |
Overall | 0.15 | 14.28 | 7.21 | 23.48 | 306275 |
RMSE | Sentinel-2 MSI | Landsat 8 OLI | Sentinel-3 SLSTR/OLCI | Suomi NPP VIIRS | Terra MODIS | |
---|---|---|---|---|---|---|
Bias | ||||||
Sentinel-2 MSI | - | - | 9.68 | 7.35 | 6.99 | |
Landsat 8 OLI | - | - | 4.92 | 4.33 | 5.32 | |
Sentinel-3 SLSTR/OLCI | −1.46 | 0.76 | - | 8.19 | 8.93 | |
Suomi NPP VIIRS | −0.34 | 1.28 | 0.65 | - | 8.86 | |
Terra MODIS | 0.47 | 1.71 | 2.16 | 2.15 | - |
№ | Date | Tile | Bias | RMSE | Bias | RMSE | Bias | RMSE |
---|---|---|---|---|---|---|---|---|
Sentinel-2 MSI | Sentinel-3 SLSTR/OLCI | Suomi NPP VIIRS | Terra MODIS | |||||
1 | 1 April 2020 | 32TPS | 0.59 | 7.15 | 0.68 | 6.72 | 1.19 | 7.59 |
2 | 1 April 2020 | 32TPT | 2.21 | 8.63 | 1.97 | 7.73 | 3.36 | 8.35 |
3 | 3 April 2020 | 32TNR | −6.00 | 14.83 | −1.97 | 7.82 | −1.61 | 6.23 |
4 | 3 April 2020 | 32TNS | −1.93 | 10.06 | −1.34 | 7.95 | −0.29 | 8.37 |
5 | 3 April 2020 | 32TPR | −3.07 | 10.60 | 0.08 | 6.83 | 0.42 | 5.68 |
6 | 3 April 2020 | 32TPS | −1.53 | 8.62 | −0.86 | 6.98 | −0.10 | 7.67 |
7 | 3 April 2020 | 32TPT | −0.47 | 7.88 | −1.16 | 6.57 | 0.30 | 5.07 |
Landsat 8 OLI | Sentinel-3 SLSTR/OLCI | Suomi NPP VIIRS | Terra MODIS | |||||
1 | 2 April 2020 | 190027 | 0.42 | 5.24 | 0.98 | 4.60 | 1.68 | 5.81 |
2 | 2 April 2020 | 190028 | 1.09 | 4.60 | 1.58 | 4.06 | 1.73 | 4.82 |
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Keuris, L.; Hetzenecker, M.; Nagler, T.; Mölg, N.; Schwaizer, G. An Adaptive Method for the Estimation of Snow-Covered Fraction with Error Propagation for Applications from Local to Global Scales. Remote Sens. 2023, 15, 1231. https://doi.org/10.3390/rs15051231
Keuris L, Hetzenecker M, Nagler T, Mölg N, Schwaizer G. An Adaptive Method for the Estimation of Snow-Covered Fraction with Error Propagation for Applications from Local to Global Scales. Remote Sensing. 2023; 15(5):1231. https://doi.org/10.3390/rs15051231
Chicago/Turabian StyleKeuris, Lars, Markus Hetzenecker, Thomas Nagler, Nico Mölg, and Gabriele Schwaizer. 2023. "An Adaptive Method for the Estimation of Snow-Covered Fraction with Error Propagation for Applications from Local to Global Scales" Remote Sensing 15, no. 5: 1231. https://doi.org/10.3390/rs15051231
APA StyleKeuris, L., Hetzenecker, M., Nagler, T., Mölg, N., & Schwaizer, G. (2023). An Adaptive Method for the Estimation of Snow-Covered Fraction with Error Propagation for Applications from Local to Global Scales. Remote Sensing, 15(5), 1231. https://doi.org/10.3390/rs15051231