Assessment of Remote Sensing Reflectance Glint Correction Methods from Fixed Automated Above-Water Hyperspectral Radiometric Measurement in Highly Turbid Coastal Waters
Abstract
1. Introduction
2. Field Data
2.1. Above-Water Hyperspectral Radiometric Data
2.2. Meteorological Data
2.3. IOPs Data
2.4. Concentrations of Chla and SPM
3. Methods
3.1. Bio-Optical Models
3.2. Generating the Glint-Free Rrs(λ)
3.3. Methods of ρ and ΔL Estimation from Above-Water Radiometry
3.4. Identification of Environmental Factors
3.4.1. Sun Azimuth and Zenith Angle
3.4.2. Aerosol Optical Thickness (AOT)
3.4.3. Sky Conditions (Clear, Scattered Clouds, or Overcast)
3.5. Statistical Metrics
4. Results
4.1. Parametrization and Validation of Bio-Optical Models
4.2. Evaluation of ρ and ΔL Estimation Methods
- Case I, High Δφ (Figure 3a and Figure 4a). This case is characterized by low variability of Rrs(λ) spectra. The lowest deviations from Rrs,ref(λ) are achieved by 3C model (Total Score = 0.90, MAPE = 8.8%, UPD = −2.4, NRMSE = 16.1%) in the range of 400–720 ± 5 nm, and the highest deviations by the Ru05 (Total Score = 0.76, MAPE = 32.9%, UPD = −9.7, NRMSE = 24.7%). Similar results are found in the range of λ = 440 ± 5 nm (blue), λ = 560 ± 5 nm (green), λ = 680 ± 5 nm (red), and λ = 720 ± 5 nm (NIR). The other methods show intermediate and relatively similar error estimates against Rrs,ref(λ), with an average of Total Score = 0.79, MAPE = 19–28%, UPD = −8–7, and NRMSE = 24–28%.
- Case II, Low Δφ (Figure 3b and Figure 4b). This case is characterized by high deviations of the models that utilize lookup tables of ρ and BA18. The 3C model shows the best score with Total score = 0.91, MAPE = 8.7%, UPD = 2.9, and NRMSE = 15.8% in the range of 400–720 ± 5 nm. Similar statistical results are observed for the blue, green, red, and NIR regions. The worst statistical scores are observed for MO99, MO15, BA18, HT23, and ZX17 methods with Total Score = 0.56, MAPE > 100%, UPD = −18, and NRMSE = 14–25%.
- Case III, Overcast sky condition (Figure 3c and Figure 4c). The MO99, MO15, BA18, and HT23 show significant overestimations against Rrs,ref(λ) across all wavelengths, with Total Score = 0.54, MAPE = 91–97%, UPD = −14.6–−14.8, NRMSE = 20–24%. The lowest deviation belongs to the 3C model with Total Score = 0.93, MAPE = 7.4%, UPD = 1.5, and NRMSE = 11.8%. The visual comparison shows that the Ku13 and JD20 models significantly underestimate Rrs(λ) in the blue and NIR regions. The ZX17 is not available for this case.
- Case IV, Scattered cloud condition (Figure 3d and Figure 4d). This case is characterized by high deviations and overestimations of MO99, MO15, BA18, and HT23 methods with Rrs(560) = 0.022–0.027 sr−1 and Total Score = 0.59, MAPE = 85–93%, UPD = −12.5–15.2, and NRMSE = 9.1–10.2%. The best simulation belongs to the 3C model with a Total Score of 0.92. The ZX17 is not available for this case.
- Case V, Extreme wind speed (Figure 3e and Figure 4e). Visual comparison of Rrs(λ) spectra indicates the relatively high variability and underestimations in the blue wavelength regions by JD20 and Ku13 methods, which utilize spectral shape for corrections. The 3C and Ru05 show the best performance with Total Score = 0.90 and 0.79, MAPE = 8.8% and 17.3%, UPD = 1.4 and −6.3, and NRMSE = 17.3% and 24.3%, respectively.
- Case VI, High wind speed (Figure 3f and Figure 4f). This case is characterized by overestimation of the MO99, MO15, BA18, HT23, and ZX17 methods with an average of ΔRrs(560) = 0.009 sr−1 relative to Rrs,ref(λ), with Total Score = 0.58, MAPE = 92–98%, UPD = −16.8–−16.1, and NRMSE = 9.8–11.2%. The 3C model shows the best performance with Total Score = 0.93, MAPE = 6.6%, UPD = 1.2, and NRMSE = 8.8%. The JD20 and Ru05 show the best performance next to the 3C model. The HT23 and ZX17 show similar results.
- Case VII, High AOT (Figure 3g and Figure 4g). This case is characterized by low variability of Rrs(λ) spectra. All models except Ru05 underestimate the Rrs(λ) spectra with an average of ΔRrs(560) = 0.004 sr−1 relative to the Rrs,ref(λ) spectra in the blue and green regions. The Ku13 and JD20 methods show the highest deviations in the blue and green regions (UPD = 11.5–18.8 and NRMSE = 37.6–60.1%). The HT23 and ZX17 show a good performance in the green-red regions (Total Score = 0.89, MAPE = 9.5%) and a relatively weaker performance in the blue region (Total Score = 0.75, MAPE = 29.3%). Overall, the 3C model shows the best performance, with Total Score = 0.89, MAPE = 9.3%, UPD = 4.6, and NRMSE = 19.1%.
- Case VIII, High sun-zenith angle (Figure 3h and Figure 4h). All methods show low variabilities. Apart from the 3C, the other methods underestimate the Rrs(λ) spectra in the blue-NIR regions. The MO99, MO15, Ru05, BA18, HT23, and JD20 show relatively similar performance with Total Score = 0.81–0.84, MAPE = 11.6–15.1%, UPD = −1.2–4.6, and NRMSE = 30.1–32.4%. The Ku13 shows a very weak performance in the blue region with a Total Score of 0.36. The 3C model shows the best performance in this case with Total Score = 0.92, MAPE = 5.2%, UPD = 0.92, and NRMSE = 22.7%. The ZX17 is not available for this case.
4.3. Variability of ρ and ΔL
4.4. QA Scores of Simulated Above-Water Rrs(λ)
4.5. Showcases of Rrs(λ) Models
5. Discussion
- Sensor Calibration and Algorithm Scope: It is important to note that this study exclusively evaluated above-water glint correction methods using in-situ radiometric measurements and did not involve satellite-based atmospheric correction algorithms. All sensors were maintained and calibrated periodically, with drift monitored through factory servicing and in-field reference checks. Calibration uncertainty was not found to significantly impact the results or the comparative performance of the evaluated glint correction methods. The TRIOS-RAMSES sensors at NJS were subject to periodic factory calibration (every 1–2 years) and routine on-site reference checks using calibrated diffuser panels and lamp standards. Calibration records indicated an annual drift within ±3% for both irradiance and radiance sensors during the study period, remaining within the manufacturer’s specified stability limits. While the primary focus of this study was on above-water glint correction methods, it is acknowledged that calibration drift may contribute to residual errors in retrieved Rrs(λ), particularly under highly dynamic environmental conditions such as monsoon periods. Future work could benefit from integrating explicit calibration drift correction or uncertainty propagation into glint correction assessments.
- Sensor Stability and Thermal Drift Management: The TRIOS-RAMSES radiometers deployed at the NIOZ Jetty Station include internal temperature sensors and manufacturer-provided thermal calibration curves, which automatically correct radiometric data for temperature-induced drift. Temperature metadata were logged during each 10-min measurement and used to monitor operational stability. Periodic factory calibrations were performed, and a comprehensive quality control protocol (based on [36]) was applied to detect and exclude any spectra exhibiting signs of thermal noise, abrupt shifts, or radiometric inconsistencies. Spectra collected during periods of rapid temperature change (e.g., exceeding ±4 °C/h) were flagged and excluded if anomalies were detected in Ed, LS, or LT signals. This approach ensured reliable data collection even during diurnal temperature variations exceeding 8 °C.
- Tidal Influence: Although tidal forcing plays a significant role in sediment transport in many estuaries, previous work at the NIOZ Jetty Station [24] demonstrated that tidal phase (ebb vs. flood) had minimal observable effect on diurnal variability of both SPM concentration and above-water radiometric measurements at this site. Consequently, tidal stage was not used as a stratification factor in our glint correction model evaluation. However, in other coastal systems with stronger tidal sediment dynamics, analyzing model performance by tidal phase may offer additional insights.
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Sym. | Parametrization | Equation | Ref. |
---|---|---|---|---|
Chla-specific absorption | a*Chla | a* Chla(λ) = aPhy(λ)/[Chla] | (5) | [52] |
Phy absorption | aPhy | aPhy(λ) = [Chla].a*Chla(λ) | (6) | [52] |
Phy absorption a | aPhy | aPhy(λ) = [a0(λ) + a1(λ) × ln(aPhy(λ1))] × aPhy(λ1) a aPhy(λ1) = 0.06 × [Chla]0.65 | (7) | [53] |
CDOM absorption | aCDOM | aCDOM(λ) = aCDOM(λ2) × exp[−SCDOM × (λ − λ2)] | (8) | [54] |
NAP absorption | aNAP | aNAP(λ) = aNAP(λ2) × exp[−SNAP × (λ − λ2)] | (9) | [54] |
Chla backscattering | bb,Chla | bb,Chla(λ) = {0.002 + 0.02 × [0.5 − 0.25 × log10[Chla] × (λ3/λ)]} × bb,Chla(λ3), bb,Chla(λ3) = 0.416 × [Chl]0.766 | (10) | [39] |
Chla backscattering b | bb,Chla | bb,Chla(λ) = [Chla] × b*b,Chla(λ3) × bNChla(λ) | (11) | [55] |
NAP backscattering c | bb,NAP | bb,NAP(λ) = bNAP(λ3) × (λ3/λ)γ − [1 − tanh(0.5 × γ2)] × aNAP(λ) bNAP(λ3) = b*SPM(λ3) × I × [SPM] | (12) | [56] |
NAP backscattering d | bb,NAP | bb,NAP(λ) = [SPM] × b*b,SPM(λ) × bNNAP(λ) b*b,SPM(λ) = A × [SPM]B, bNNAP(λ) = a*Chla(λ3)/a*Chla(λ) | (13) | [55] |
Parameter | Min | Max | Mean | Median | Std | N |
---|---|---|---|---|---|---|
Chla (mg m−3) | 0.44 | 51.48 | 9.080 | 6.31 | 2.56 | 648 |
SPM (g m−3) | 2.20 | 82.40 | 16.06 | 12.75 | 5.98 | 648 |
anw(675) (m−1) | 0.073 | 0.212 | 0.134 | 0.131 | 0.037 | 22 |
anw(440) (m−1) | 0.792 | 1.206 | 0.934 | 0.901 | 0.128 | 22 |
aPhy(675) (m−1) | 0.030 | 0.132 | 0.069 | 0.078 | 0.032 | 22 |
aPhy(440) (m−1) | 0.052 | 0.224 | 0.119 | 0.138 | 0.055 | 22 |
a*Chl(675) (m2 mg−1) | 0.014 | 0.021 | 0.017 | 0.017 | 0.002 | 22 |
a*Chl(440) (m2 mg−1) | 0.022 | 0.036 | 0.028 | 0.029 | 0.004 | 22 |
aNAP(440) (m−1) | 0.097 | 0.264 | 0.188 | 0.189 | 0.041 | 22 |
a*NAP(440) (m2 mg−1) | 0.004 | 0.036 | 0.015 | 0.012 | 0.009 | 22 |
SNAP (nm−1) | −0.011 | −0.009 | −0.01 | −0.01 | 0.001 | 22 |
aCDOM(440) (m−1) | 0.441 | 0.906 | 0.621 | 0.599 | 0.103 | 22 |
SCDOM (nm−1) | −0.013 | −0.008 | −0.011 | −0.011 | 0.001 | 22 |
b*SPM(λ) (m2 mg−1) | 0.182 | 1.991 | 0.401 | 0.305 | 0.395 | 12 |
Model | ρ(λ,θV,Δφ) | ΔL | Remarks | Ref. |
---|---|---|---|---|
MO99 | Lookup table of θV, Δφ, θS, and wind speed | min of Rrs(750–800) | ρ = 0.028 in overcast and full ranges of wind speeds | [14] |
MO15 | Similar to MO99 | improved values of ρ for sky polarization | [33] | |
Ru05 a | ρ = 0.0256 in clear skies, ρ = 0.0256 + 0.00039W + 0.000034W2 in cloudy | Similarity spectrum normalization at 780 nm | ρ fits all simulations of 30 ≤ θS ≤ 70 with 1% err for W = 5 and 3% for W = 10 | [27] |
BA18 | ρ = 0.0265 | min of Rrs(750–950) | Rrs(λ) optimized with a two-stream RT model | [34] |
HT23 b | Lookup table of λ, θV, Δφ, θs, wind speed, and AOT. | min of Rrs(775–850) | RT computations used for AOT, polarization, and wind effects. Wavelength-dependent of ρ | [30] |
Ku13 | ρ = 0.020 | Fitting a power function through the 350–380 nm and 890–900 nm regions. Wavelength-dependent ΔL | [7] | |
JD20 | ρ = 0.028 | Relative height of the water-absorption-dip-induced-reflectance-peak-at-810 nm. It assumes ΔL is wavelength independent for variable cloud covers. | [29] | |
ZX17 | Wavelength-dependent of ρ. Lookup table of θV,Δφ, θS, wind speed, and AOT | min of Rrs(775–850) | Lookup table for: Wind speed:0, 5, 10, 15 θS ≤ 60° AOT: 0, 0.05, 0.10, 0.20, 0.50 Clear Sky (cloud cover = 0) | [2] |
3C | ρ and ΔL were estimated through optimization of LT(λ)/Ed(λ) modeling against measured LT(λ)/Ed(λ) using the fit parameters of IOPs and WCCs | It needs an overview of IOPs and WCCs, flexible for all environmental conditions. Wavelength-dependent of ΔL | [17] |
Case | Title | CC | θS | WS | AOT | Δφ | N |
---|---|---|---|---|---|---|---|
Case I | High Δφ | Clear | θS ≤ 45° | WS ≤ 3 | low | Δφ ≥ 60° | 65 |
Case II | Low Δφ | Clear | θS ≤ 45° | WS ≤ 3 | low | Δφ ≤ 40° | 83 |
Case III | Overcast skies | Overcasts | 45° ≤ θS ≤ 60° | WS ≤ 3 | low | 40° < Δφ < 60° | 115 |
Case IV | Scattered cloud | Scattered | 45° ≤ θS ≤ 60° | WS ≤ 3 | low | 40° < Δφ < 60° | 307 |
Case V | Extreme WS | Clear | 45° ≤ θS ≤ 60° | WS ≥ 9 | low | 40° ≤ Δφ ≤ 60° | 69 |
Case VI | High WS | Clear | 45° ≤ θS ≤ 60° | 4 ≤WS ≤ 7 | low | 40° ≤ Δφ ≤ 60° | 211 |
Case VII | High AOT | Clear | 45° ≤ θS ≤ 60° | WS ≤ 3 | high | 40° ≤ Δφ ≤ 60° | 32 |
Case VIII | High θS | Clear | θS ≥ 80° | WS ≤ 3 | low | 40° ≤ Δφ ≤ 60° | 11 |
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Arabi, B.; Moradi, M.; Hommersom, A.; Molen, J.v.d.; Serre-Fredj, L. Assessment of Remote Sensing Reflectance Glint Correction Methods from Fixed Automated Above-Water Hyperspectral Radiometric Measurement in Highly Turbid Coastal Waters. Remote Sens. 2025, 17, 2209. https://doi.org/10.3390/rs17132209
Arabi B, Moradi M, Hommersom A, Molen Jvd, Serre-Fredj L. Assessment of Remote Sensing Reflectance Glint Correction Methods from Fixed Automated Above-Water Hyperspectral Radiometric Measurement in Highly Turbid Coastal Waters. Remote Sensing. 2025; 17(13):2209. https://doi.org/10.3390/rs17132209
Chicago/Turabian StyleArabi, Behnaz, Masoud Moradi, Annelies Hommersom, Johan van der Molen, and Leon Serre-Fredj. 2025. "Assessment of Remote Sensing Reflectance Glint Correction Methods from Fixed Automated Above-Water Hyperspectral Radiometric Measurement in Highly Turbid Coastal Waters" Remote Sensing 17, no. 13: 2209. https://doi.org/10.3390/rs17132209
APA StyleArabi, B., Moradi, M., Hommersom, A., Molen, J. v. d., & Serre-Fredj, L. (2025). Assessment of Remote Sensing Reflectance Glint Correction Methods from Fixed Automated Above-Water Hyperspectral Radiometric Measurement in Highly Turbid Coastal Waters. Remote Sensing, 17(13), 2209. https://doi.org/10.3390/rs17132209