Deep Learning-Based Automatic Extraction of Cyanobacterial Blooms from Sentinel-2 MSI Satellite Data
Abstract
:1. Introduction
2. Study Area and Data Description
2.1. Study Area
2.2. Data Description
3. Methods
3.1. Overall Technical Process
3.2. Sentinel-2 MSI Data Pre-Processing
3.3. Extraction of “Ground Truth” of CyanoHABs Based on Visual Interpretation
3.3.1. Cloud Recognition
3.3.2. Extraction of CyanoHABs Based on FAI Threshold Determined by Visual Interpretation
3.4. Training of CyanoHABs Extraction Model Based on DL
3.5. Prediction of CyanoHABs Based on the DL Model
3.6. Accuracy Evaluation
3.6.1. Accuracy Evaluation Indexes for Model Training
3.6.2. Accuracy Evaluation Indexes for Model Prediction
3.6.3. Other Comparison Methods
4. Results
4.1. CyanoHABs Extraction Results Based on Visual Interpretation
4.2. CyanoHABs Extraction Results Based on Automation Methods
4.2.1. CyanoHABs Extraction DL Model and Results
4.2.2. CyanoHABs Extraction Parameters Based on Other Comparison Methods
4.3. Accuracy Evaluation and Comparison
4.3.1. Accuracy Evaluation on the Pixel Level
4.3.2. Accuracy Evaluation on Area Level
4.3.3. Accuracy Evaluation on Long Time Series Frequency Map Level
4.4. Spatial and Temporal Change Analysis of CyanoHABs
5. Discussion
5.1. Applicability of the DL Model
5.2. Sensitivity of the DL Model to Clouds
5.3. Limitations of the DL Model
5.4. Extracting CyanoHABs by DL Based on OLI-MSI Virtual Constellation
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Methods | Recall | Precision | F1-Score | RE |
---|---|---|---|---|
DL Model | 0.89 | 0.91 | 0.90 | 3% |
Gradient Mode | 0.97 | 0.69 | 0.81 | 40% |
Fixed Threshold | 0.94 | 0.72 | 0.81 | 31% |
Otsu | 0.36 | 0.95 | 0.53 | 62% |
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Yan, K.; Li, J.; Zhao, H.; Wang, C.; Hong, D.; Du, Y.; Mu, Y.; Tian, B.; Xie, Y.; Yin, Z.; et al. Deep Learning-Based Automatic Extraction of Cyanobacterial Blooms from Sentinel-2 MSI Satellite Data. Remote Sens. 2022, 14, 4763. https://doi.org/10.3390/rs14194763
Yan K, Li J, Zhao H, Wang C, Hong D, Du Y, Mu Y, Tian B, Xie Y, Yin Z, et al. Deep Learning-Based Automatic Extraction of Cyanobacterial Blooms from Sentinel-2 MSI Satellite Data. Remote Sensing. 2022; 14(19):4763. https://doi.org/10.3390/rs14194763
Chicago/Turabian StyleYan, Kai, Junsheng Li, Huan Zhao, Chen Wang, Danfeng Hong, Yichen Du, Yunchang Mu, Bin Tian, Ya Xie, Ziyao Yin, and et al. 2022. "Deep Learning-Based Automatic Extraction of Cyanobacterial Blooms from Sentinel-2 MSI Satellite Data" Remote Sensing 14, no. 19: 4763. https://doi.org/10.3390/rs14194763
APA StyleYan, K., Li, J., Zhao, H., Wang, C., Hong, D., Du, Y., Mu, Y., Tian, B., Xie, Y., Yin, Z., Zhang, F., & Wang, S. (2022). Deep Learning-Based Automatic Extraction of Cyanobacterial Blooms from Sentinel-2 MSI Satellite Data. Remote Sensing, 14(19), 4763. https://doi.org/10.3390/rs14194763