Oceanic Mesoscale Eddy Detection Method Based on Deep Learning
Abstract
:1. Introduction
2. Related Work
3. Outline of Our Method
4. Accurate Small Sample Acquisition and Data Augmentation
4.1. Accurate Sample Acquisition
4.2. Data Augmentation
5. OEDNet Model Based on Object Detection Network
5.1. Network Structure
5.2. Network Training
6. Eddy Center Positioning and Eddy Range Extraction
7. Result and Discussion
8. Conclusions and Prospects
Author Contributions
Funding
Conflicts of Interest
References
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Methods | Recall | Precision | F-Measure | Execution Time (Sec) |
---|---|---|---|---|
Q-criterion | 71.31% | 65.21% | 0.681 | 5.21 |
Ω-criterion | 77.24% | 77.51% | 0.774 | 6.49 |
Δ-criterion | 84.23% | 39.69% | 0.540 | 7.07 |
Okubo–Weiss parameter | 77.13% | 69.75% | 0.733 | 3.11 |
Closed contour method (dataset in [18]) | 95.68% | 85.59% | 0.904 | 132.90 |
Proposed method (OEDNet) | 94.61% | 96.65% | 0.956 | 7.10 |
The Train Set of the Model | Recall | Precision | F-Measure |
---|---|---|---|
Original maps | 89.77% | 92.30% | 0.910 |
Images only with added noise | 91.67% | 96.74% | 0.941 |
Images with all data augmentation methods | 94.61% | 96.65% | 0.956 |
Sea Area | Recall | Precision | F-Measure |
---|---|---|---|
Indian Ocean | 96.55% | 98.25% | 0.974 |
Pacific Ocean | 95.31% | 98.39% | 0.968 |
Atlantic Ocean | 92.59% | 98.03% | 0.952 |
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Duo, Z.; Wang, W.; Wang, H. Oceanic Mesoscale Eddy Detection Method Based on Deep Learning. Remote Sens. 2019, 11, 1921. https://doi.org/10.3390/rs11161921
Duo Z, Wang W, Wang H. Oceanic Mesoscale Eddy Detection Method Based on Deep Learning. Remote Sensing. 2019; 11(16):1921. https://doi.org/10.3390/rs11161921
Chicago/Turabian StyleDuo, Zijun, Wenke Wang, and Huizan Wang. 2019. "Oceanic Mesoscale Eddy Detection Method Based on Deep Learning" Remote Sensing 11, no. 16: 1921. https://doi.org/10.3390/rs11161921
APA StyleDuo, Z., Wang, W., & Wang, H. (2019). Oceanic Mesoscale Eddy Detection Method Based on Deep Learning. Remote Sensing, 11(16), 1921. https://doi.org/10.3390/rs11161921