Vegetation Classification and Evaluation of Yancheng Coastal Wetlands Based on Random Forest Algorithm from Sentinel-2 Images
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Dataset
2.2.1. Sentinel-2 MSI Data
2.2.2. Sample Data
2.3. Methodology
2.3.1. Data Preprocessing
2.3.2. Construction of Dense Time-Series Dataset
2.3.3. Extraction of Vegetation’s Phenological Features
2.3.4. Feature Fusion of Spectral Features, Vegetation Indices, and Phenological Features
2.4. Random Forest Classification (RF)
- (a)
- Use N for the number of training examples (samples) and M for the number of features.
- (b)
- Choose the number of input features (m) for determining decisions at each tree node, where m is considerably less than M.
- (c)
- Employ bootstrapping by randomly sampling N times with replacement, creating a training set, and evaluating errors on the remaining unsampled examples.
- (d)
- Randomly select m features for each node and compute optimal splitting based on these features.
- (e)
- Allow each tree to grow fully without pruning.
2.5. Accuracy Assessment
2.6. Statistical Significance of Classifiers’ Performance
3. Results and Analysis
3.1. Analysis of Available Pixel Count
3.2. Analysis of Vegetation Phenology Models’ Fitted Curves Based on NDVI
3.3. Classification Results and Accuracy Evaluation
3.4. Feature Contribution Analysis
3.5. Comparison of Multiple Feature Fusion Methods
3.6. Misclassification Analysis Based on Land-Use Change Mapping
3.7. Analysis of Misclassification Results
4. Discussion
4.1. Comparison with Previous Works
4.2. Shortcomings and Future Plans
5. Conclusions
- A classified map of the core zone of the Yancheng Wetland Rare Birds National Nature Reserve was obtained for the year 2022, with an overall classification accuracy of 95.64% and a kappa coefficient of 0.94.
- The combination of spectral features, vegetation indices, and phenological characteristics produced the highest level of accuracy in classification. POP, SOS, NDVIre, and mid-infrared bands (Band12 and Band11) were useful for the classification of coastal wetlands.
- The influence of tidal fluctuations on SA along the shoreline was not considered in this experiment. The misclassification of SA near the coastline in the categorization map was caused by its long-term submersion, partial submersion, and non-submersion. By comparing SA plants located near the coastline with those located farther away, we showed that the phenological magnitude of SA near the coastline was relatively smaller. This finding helps to explain why these plants are more likely to be misidentified as PA.
- Different regions within the core zone of the Yancheng Wetland Rare Birds National Nature Reserve exhibit different development patterns of PA. There is a potential 1–2-month disparity in growth between early- and late-growing PA. The variation in vegetation cover can be explained by different factors, such as vegetation characteristics, soil salinity, climate changes, and the intricate nature of the vegetation.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Name | Date | Cloud Cover (%) |
---|---|---|
S2_SR_HARMONIZED_20220103T024121 | 3 January 2022 | 16.93 |
S2_SR_HARMONIZED_20220108T024059 | 8 January 2022 | 29.19 |
S2_SR_HARMONIZED_20220113T024051 | 13 January 2022 | 16.13 |
S2_SR_HARMONIZED_20220118T024029 | 18 January 2022 | 20.87 |
S2_SR_HARMONIZED_20220128T023949 | 28 January 2022 | 47.73 |
S2_SR_HARMONIZED_20220227T023639 | 2 February 2022 | 4.41 |
S2_SR_HARMONIZED_20220304T023611 | 4 March 2022 | 16.66 |
S2_SR_HARMONIZED_20220309T023549 | 9 March 2022 | 18.62 |
S2_SR_HARMONIZED_20220324T023551 | 24 March 2022 | 0 |
S2_SR_HARMONIZED_20220329T023549 | 29 March 2022 | 3.76 |
S2_SR_HARMONIZED_20220403T023551 | 3 April 2022 | 3.03 |
S2_SR_HARMONIZED_20220408T023549 | 8 April 2022 | 1.59 |
S2_SR_HARMONIZED_20220503T023551 | 3 May 2022 | 0.09 |
S2_SR_HARMONIZED_20220518T023549 | 18 May 2022 | 13.98 |
S2_SR_HARMONIZED_20220523T023601 | 23 May 2022 | 0 |
S2_SR_HARMONIZED_20220602T023601 | 2 June 2022 | 19.08 |
S2_SR_HARMONIZED_20220607T023549 | 7 June 2022 | 0.41 |
S2_SR_HARMONIZED_20220617T023529 | 17 June 2022 | 35.13 |
S2_SR_HARMONIZED_20220702T023541 | 2 July 2022 | 41.39 |
S2_SR_HARMONIZED_20220712T023541 | 12 July 2022 | 66.25 |
S2_SR_HARMONIZED_20220722T023541 | 22 July 2022 | 22.27 |
S2_SR_HARMONIZED_20220727T023529 | 27 July 2022 | 30.29 |
S2_SR_HARMONIZED_20220801T023541 | 1 August 2022 | 32.59 |
S2_SR_HARMONIZED_20220821T023541 | 21 August 2022 | 0.07 |
S2_SR_HARMONIZED_20220826T023529 | 26 August 2022 | 61.19 |
S2_SR_HARMONIZED_20220910T023541 | 10 September 2022 | 73.93 |
S2_SR_HARMONIZED_20220930T023541 | 30 September 2022 | 55.15 |
S2_SR_HARMONIZED_20221010T023621 | 10 October 2022 | 1.52 |
S2_SR_HARMONIZED_20221015T023649 | 15 October 2022 | 41.48 |
S2_SR_HARMONIZED_20221020T023731 | 20 October 2022 | 34.13 |
S2_SR_HARMONIZED_20221025T023759 | 25 October 2022 | 4.44 |
S2_SR_HARMONIZED_20221104T023849 | 4 November 2022 | 19.96 |
S2_SR_HARMONIZED_20221124T024029 | 24 November 2022 | 21.01 |
S2_SR_HARMONIZED_20221214T024119 | 14 December 2022 | 11.05 |
S2_SR_HARMONIZED_20221219T024121 | 19 December 2022 | 1.84 |
S2_SR_HARMONIZED_20221224T024119 | 24 December 2022 | 39.70 |
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Vegetation Indices | Calculation Formulae |
---|---|
NDVI | |
GNDVI | |
NDVIre | |
NDWI | |
EVI | 2.5 × ((NIR − RED)/(NIR + 6 × RED − 7.5 × BLUE + 1)) |
Allocation | Classification 2 | ||
---|---|---|---|
Classification 1 | Correct | Incorrect | Sum |
Correct | |||
Incorrect | |||
Sum |
Classification | Scheme 1 | Scheme 2 | Scheme 3 | Scheme 4 | Scheme 5 | Scheme 6 | Scheme 7 | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
PA1% | UA% | PA1% | UA% | PA1% | UA% | PA1% | UA% | PA1% | UA% | PA1% | UA% | PA1% | UA% | |
PA | 98.25 | 89.95 | 90.78 | 86.26 | 89.78 | 83.53 | 99.00 | 90.43 | 98.50 | 93.39 | 95.01 | 92.02 | 99.25 | 93.65 |
SS | 75.26 | 96.05 | 72.17 | 87.50 | 46.39 | 57.69 | 73.20 | 98.61 | 79.38 | 96.25 | 64.95 | 87.50 | 75.26 | 98.65 |
SA | 86.98 | 95.39 | 79.00 | 84.31 | 85.29 | 83.20 | 87.39 | 95.41 | 92.44 | 98.65 | 91.18 | 90.42 | 94.12 | 97.39 |
WA | 99.00 | 96.73 | 99.00 | 93.38 | 88.29 | 88.29 | 99.33 | 96.43 | 99.67 | 95.21 | 98.66 | 93.95 | 99.33 | 95.81 |
UN | 93.18 | 97.62 | 79.55 | 94.60 | 45.46 | 74.07 | 93.18 | 97.62 | 90.91 | 100 | 84.09 | 94.87 | 90.91 | 100 |
OA% | 93.70 | 88.32 | 82.67 | 93.98 | 95.46 | 94.08 | 95.64 | |||||||
Kappa | 0.91 | 0.84 | 0.76 | 0.92 | 0.94 | 0.92 | 0.94 |
Classification 1 | Classification 2 | Z-Test | X2-Test | p-Value |
---|---|---|---|---|
RF with SP+VI+PH | RF with SP | 3.13 | 21.0 | =0.0029 |
RF with SP+VI+PH | RF with VI | 7.94 | 79.0 | <0.0001 |
RF with SP+VI+PH | RF with PH | 11.44 | 142.0 | <0.0001 |
RF with SP+VI+PH | RF with SP+VI | 2.71 | 18.0 | =0.0104 |
RF with SP+VI+PH | RF with SP+PH | 0.38 | 2.0 | =0.8501 |
RF with SP+VI+PH | RF with VI+PH | 5.46 | 39.0 | <0.0001 |
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Wang, Y.; Jin, S.; Dardanelli, G. Vegetation Classification and Evaluation of Yancheng Coastal Wetlands Based on Random Forest Algorithm from Sentinel-2 Images. Remote Sens. 2024, 16, 1124. https://doi.org/10.3390/rs16071124
Wang Y, Jin S, Dardanelli G. Vegetation Classification and Evaluation of Yancheng Coastal Wetlands Based on Random Forest Algorithm from Sentinel-2 Images. Remote Sensing. 2024; 16(7):1124. https://doi.org/10.3390/rs16071124
Chicago/Turabian StyleWang, Yongjun, Shuanggen Jin, and Gino Dardanelli. 2024. "Vegetation Classification and Evaluation of Yancheng Coastal Wetlands Based on Random Forest Algorithm from Sentinel-2 Images" Remote Sensing 16, no. 7: 1124. https://doi.org/10.3390/rs16071124
APA StyleWang, Y., Jin, S., & Dardanelli, G. (2024). Vegetation Classification and Evaluation of Yancheng Coastal Wetlands Based on Random Forest Algorithm from Sentinel-2 Images. Remote Sensing, 16(7), 1124. https://doi.org/10.3390/rs16071124