Vegetation Carbon Stock Estimation Using Remote Sensing: A Bibliometric and Critical Review
Abstract
1. Introduction
2. Research Methodology
2.1. Scientometric Workflow for Bibliometric Mapping
2.2. Core Literature Selection and Prioritisation Criteria
3. Results
3.1. Bibliometric Mapping
3.1.1. Annual Analysis of the Publications
3.1.2. The Most Cited Publications
3.1.3. The Most Productive Countries
3.1.4. Keyword Co-Occurrence Analysis
3.2. Science Mapping of the Machine-Learning-Related Subset
3.2.1. Source Co-Citation Network
3.2.2. Country Collaboration Network
3.2.3. Timeline View Analysis
3.2.4. Keyword Burst Analysis
3.3. Critical Analysis
3.3.1. Application and Research Objects
3.3.2. Data and Foundations
3.3.3. Modelling and Validation
3.3.4. Cross-Cutting Methodological Gaps
4. Synthesis and Discussion
4.1. Key Findings
4.1.1. Knowledge Evolution and Thematic Shift
4.1.2. Data Foundations and Sensor Synergy
4.1.3. Modelling, Validation, and Methodological Constraints
4.2. Implications for Forestry Practice and Policy
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| AC | Average Citations |
| AGB | Aboveground Biomass |
| AGC | Aboveground Carbon |
| ALS | Airborne Laser Scanning |
| ANN | Artificial Neural Network |
| ARVI | Atmospherically Resistant Vegetation Index |
| CatBoost | Categorical Boosting |
| CNN | Convolutional Neural Network |
| CV | Cross-Validation |
| DEM | Digital Elevation Model |
| EVI | Enhanced Vegetation Index |
| GEDI | Global Ecosystem Dynamics Investigation |
| GLAS | Geoscience Laser Altimeter System |
| ICESat | Ice, Cloud, and Land Elevation Satellite |
| K-fold CV | K-Fold Cross-Validation |
| k-NN | k-Nearest Neighbours |
| LiDAR | Light Detection and Ranging |
| LODO | Leave-One-Domain-Out |
| LOOCV | Leave-One-Out Cross-Validation |
| MAE | Mean Absolute Error |
| MODIS | Moderate Resolution Imaging Spectroradiometer |
| MRV | Measurement, Reporting and Verification |
| MSAVI | Modified Soil-Adjusted Vegetation Index |
| NDVI | Normalized Difference Vegetation Index |
| NRMSE | Normalized Root Mean Square Error |
| OSAVI | Optimized Soil-Adjusted Vegetation Index |
| PCA | Principal Component Analysis |
| PRISMA | Preferred Reporting Items for Systematic Reviews and Meta-Analyses |
| R2 | Coefficient of Determination |
| RF | Random Forest |
| RMSE | Root Mean Square Error |
| SAR | Synthetic Aperture Radar |
| SAVI | Soil-Adjusted Vegetation Index |
| SIF | Solar-Induced Fluorescence |
| SVR | Support Vector Regression |
| SVM | Support Vector Machine |
| TC | Total Citations |
| TP | Total Publications |
| UAV | Uncrewed Aerial Vehicle |
| VCS | Vegetation Carbon Stock |
| WDRVI | Wide Dynamic Range Vegetation Index |
| XGBoost | Extreme Gradient Boosting |
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| Country | TP | TC | AC | ≥100 | ≥50 | ≥30 | ≥10 | H-Index |
|---|---|---|---|---|---|---|---|---|
| China | 191 | 5068 | 955.26 | 9 | 24 | 47 | 104 | 35 |
| USA | 172 | 7541 | 1238.97 | 16 | 41 | 73 | 133 | 46 |
| United Kingdom | 85 | 5305 | 808.74 | 14 | 26 | 41 | 70 | 35 |
| India | 75 | 2064 | 383.61 | 5 | 11 | 24 | 42 | 26 |
| Germany | 64 | 2440 | 460.02 | 6 | 17 | 26 | 48 | 29 |
| France | 51 | 3427 | 569.51 | 9 | 20 | 28 | 46 | 28 |
| Brazil | 47 | 2011 | 306.58 | 5 | 8 | 14 | 26 | 21 |
| Italy | 44 | 3293 | 477.68 | 11 | 17 | 23 | 32 | 25 |
| Cluster Color | Observed Keywords | No. of Keywords |
|---|---|---|
| Red | biomass, carbon stock, climate-change, dynamics, forests, machine learning, remote sensing, sequestration, stocks, storage, vegetation | 11 |
| Green | aboveground biomass, airborne lidar, boreal forest, carbon, forest biomass, Landsat, lidar, models, tropical forest | 9 |
| Blue | allometry, carbon stocks, deforestation, density, emissions, forest, height, map | 8 |
| Yellow | area, classification, cover, leaf-area index, prediction, random forest, vegetation index | 7 |
| Keyword | Occurrences | Links | Total Link Strength |
|---|---|---|---|
| aboveground biomass | 213 | 34 | 700 |
| carbon stocks | 170 | 35 | 587 |
| biomass | 148 | 34 | 476 |
| lidar | 146 | 32 | 509 |
| remote sensing | 124 | 33 | 458 |
| vegetation | 96 | 23 | 316 |
| carbon | 76 | 23 | 258 |
| forest | 72 | 33 | 256 |
| airborne lidar | 70 | 32 | 230 |
| carbon stock | 65 | 30 | 189 |
| Time Period | Keywords |
|---|---|
| (2015–2018) | classification, lidar, remote sensing, carbon stocks, forest, storage, biomass, climate change, boreal forest |
| (2018–2021) | aboveground biomass, airborne lidar, time series, forest biomass, models, random forest, cover, tropical forest, imagery, prediction, map |
| (2021–2024) | machine learning, index, vegetation biomass, vegetation index |
| Ref. | Publication Year | Publication Source | Total Citations | Average Citations | Citation Score | JCR Quartile | Journal Score | Composite Score |
|---|---|---|---|---|---|---|---|---|
| [56] | 2018 | Remote Sensing | 183 | 26.14 | 4 | Q1 | 4 | 4 |
| [57] | 2018 | SPRS Journal of Photogrammetry and Remote Sensing | 85 | 12.14 | 4 | Q1 | 4 | 4 |
| [58] | 2022 | Remote Sensing | 25 | 8.33 | 4 | Q1 | 4 | 4 |
| [59] | 2023 | Ecological Informatics | 18 | 9.00 | 4 | Q1 | 4 | 4 |
| [60] | 2019 | Remote Sensing of Environment | 56 | 9.33 | 4 | Q1 | 4 | 4 |
| [61] | 2020 | Remote Sensing | 37 | 7.40 | 4 | Q1 | 4 | 4 |
| [62] | 2023 | Remote Sensing | 16 | 8.00 | 4 | Q1 | 4 | 4 |
| [63] | 2021 | Science of the Total Environment | 80 | 20.00 | 4 | Q1 | 4 | 4 |
| [64] | 2022 | Journal of Environmental Management | 29 | 9.67 | 4 | Q1 | 4 | 4 |
| [54] | 2022 | Remote Sensing of Environment | 58 | 19.33 | 4 | Q1 | 4 | 4 |
| [65] | 2019 | Remote Sensing of Environment | 101 | 16.83 | 4 | Q1 | 4 | 4 |
| [63] | 2024 | Remote Sensing of Environment | 10 | 10.00 | 4 | Q1 | 4 | 4 |
| [66] | 2021 | Ecological Informatics | 40 | 10.00 | 4 | Q1 | 4 | 4 |
| [67] | 2023 | Remote Sensing of Environment | 20 | 10.00 | 4 | Q1 | 4 | 4 |
| [68] | 2019 | ISPRS Journal of Photogrammetry and Remote Sensing | 99 | 16.50 | 4 | Q1 | 4 | 4 |
| [69] | 2019 | Remote Sensing | 109 | 18.17 | 4 | Q1 | 4 | 4 |
| [70] | 2020 | Remote Sensing | 35 | 7.00 | 4 | Q1 | 4 | 4 |
| [71] | 2020 | Remote Sensing of Environment | 110 | 22.00 | 4 | Q1 | 4 | 4 |
| [72] | 2019 | Ecological Informatics | 102 | 17.00 | 4 | Q1 | 4 | 4 |
| [73] | 2019 | International Journal of Applied Earth Observation and Geoinformation | 78 | 13.00 | 4 | Q1 | 4 | 4 |
| [74] | 2022 | Ecological Indicators | 34 | 11.33 | 4 | Q1 | 4 | 4 |
| [75] | 2017 | IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing | 87 | 10.88 | 4 | Q1 | 4 | 4 |
| [76] | 2021 | Environmental Research Letters | 30 | 7.50 | 4 | Q1 | 4 | 4 |
| [77] | 2019 | Remote Sensing | 73 | 12.17 | 4 | Q1 | 4 | 4 |
| [78] | 2019 | International Journal of Applied Earth Observation and Geoinformation | 72 | 12.00 | 4 | Q1 | 4 | 4 |
| [79] | 2019 | Remote Sensing | 71 | 11.83 | 4 | Q1 | 4 | 4 |
| [80] | 2022 | Ecological Informatics | 35 | 11.67 | 4 | Q1 | 4 | 4 |
| [81] | 2020 | International Journal of Applied Earth Observation and Geoinformation | 35 | 7.00 | 4 | Q1 | 4 | 4 |
| [82] | 2021 | Geophysical Research Letters | 100 | 25.00 | 4 | Q1 | 4 | 4 |
| [83] | 2022 | Remote Sensing of Environment | 50 | 16.67 | 4 | Q1 | 4 | 4 |
| [84] | 2020 | Remote Sensing | 77 | 15.40 | 4 | Q1 | 4 | 4 |
| [85] | 2017 | GIScience & Remote Sensing | 62 | 7.75 | 4 | Q1 | 4 | 4 |
| Ref. | Ecosystem | Carbon Pool | Scale | Sensor/Data Type | Ground Truth | Algorithm | Validation | Key Performance |
|---|---|---|---|---|---|---|---|---|
| [53] | Forest | AGB | Regional | Sentinel-2 + ALOS-2 PALSAR-2 | Volume tables + species-specific wood density | SVR | Hold-out | R2 = 0.73; RMSE = 38.68 Mg ha−1 |
| [54] | Tidal marsh vegetation | AGC | National | Landsat + Sentinel-1 + NAIP | Destructive sampling + allometry | RF | Cross-validation | R2 = 0.58; NRMSE = 10.3% |
| [55] | Forest | AGC | Regional | Sentinel-2 + Sentinel-1 + ALOS-2 PALSAR-2 | Allometric equations | CNN | Random split | R2 = 0.7465; RMSE = 22.67 |
| [56] | Tropical forest | AGC | Regional | Sentinel-1 | Allometric equations | PCA-ANN | Hold-out | R2 = 0.7465; RMSE = 6.29 t ha−1 |
| [57] | Subtropical forest | AGB | National | MODIS + ICESat/GLAS + DEM + climate | Destructive sampling + allometry + volume-based estimation | Cubist | Cross-validation | R2 = 0.65; RMSE = 54 Mg ha−1 |
| [58] | Mangrove forest | AGC | Regional | EO-1 Hyperion | Allometric equations | SVM | Hold-out | R2 = 0.84–0.87 |
| [59] | Urban forest | AGC | Regional | Landsat 8 + Sentinel-2 | Allometric equations | CatBoost | Hold-out | R2 = 0.70; RMSE = 5.76 Mg ha−1 |
| [60] | Mangrove forest | AGB | Regional | UAV LiDAR + RGB | Allometric equations | XGBoost | Hold-out | R2 = 0.8319; RMSE = 22.76 Mg ha−1 |
| [61] | Dry deciduous tropical forest | AGB | Regional | Sentinel-2 | Destructive sampling + allometric models | RF | k-fold cross-validation | Adjusted R2 = 0.91; RMSE = 23.72 Mg ha−1 |
| [62] | Global terrestrial vegetation | AGB | Global | Compiled AGB maps + ancillary layers | NFI- and research-network-based compiled reference | RF | Hold-out | R2 = 0.24–0.36 |
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Share and Cite
Min, X.; Yusof, M.J.M.; Fan, L.; Maruthaveeran, S. Vegetation Carbon Stock Estimation Using Remote Sensing: A Bibliometric and Critical Review. Forests 2026, 17, 503. https://doi.org/10.3390/f17040503
Min X, Yusof MJM, Fan L, Maruthaveeran S. Vegetation Carbon Stock Estimation Using Remote Sensing: A Bibliometric and Critical Review. Forests. 2026; 17(4):503. https://doi.org/10.3390/f17040503
Chicago/Turabian StyleMin, Xiaoxiao, Mohd Johari Mohd Yusof, Luxin Fan, and Sreetheran Maruthaveeran. 2026. "Vegetation Carbon Stock Estimation Using Remote Sensing: A Bibliometric and Critical Review" Forests 17, no. 4: 503. https://doi.org/10.3390/f17040503
APA StyleMin, X., Yusof, M. J. M., Fan, L., & Maruthaveeran, S. (2026). Vegetation Carbon Stock Estimation Using Remote Sensing: A Bibliometric and Critical Review. Forests, 17(4), 503. https://doi.org/10.3390/f17040503

