Earth Observation and Artificial Intelligence for Improving Safety to Navigation in Canada Low-Impact Shipping Corridors
Abstract
:1. Introduction
2. Study Area and Datasets
2.1. Study Area
2.2. Satellite Imagery
3. Methods
3.1. Visual Interpretation
- A band ratio, such as green/blue (G/B), was applied to images to enhance the contrast between shoals, land and deep water;
- Comparison of imagery acquired at various times where a potential hazard was found to avoid commission errors related to ice, cloud, cloud shadow, ship sediment, waves, floating debris, or wildlife; and
- Consultation of existing CHS products to determine if detected shoals have already been charted.
3.2. Automatic Analysis
3.2.1. Ground Truth Data Creation
3.2.2. Random Forest Classification
3.2.3. Neural Network Classification
4. Results
4.1. Visual Interpretation
4.2. Automatic Detection
4.2.1. Study Site 1
4.2.2. Study Site 2
5. Discussion
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Sensor | Swath Width (km) | Resolution (m) | Bands Used |
---|---|---|---|
Landsat 8 | 185 | 30 m | Blue, Green, Red, NIR |
Sentinel-2 | 290 | 10 m | Blue, Green, Red, NIR |
PlanetScope | 24.6 | 3 m | Blue, Green, Red, NIR |
Study Site | Sensor | Date | Bands Used |
---|---|---|---|
1 | Worlview-2 | 21 August 2017 | Blue, Green, Red, NIR1 |
1 | Sentinel-2 | 21 August 2019 | Blue, Green, Red, NIR |
2 | Worlview-2 | 13 August 2017 | Blue, Green, Red, NIR1 |
2 | Sentinel-2 | 13 August 2018 | Blue, Green, Red, NIR |
Sensor | Classifier | Commission Error (%) | Omission Error (%) | Overall Accuracy (%) |
---|---|---|---|---|
WorldView-2 | Convolutional Neural Network | 17.36 | 1.21 | 92.69 |
WorldView-2 | Random Forest | 5.68 | 9.20 | 93.50 |
Sentinel-2 | Convolutional Neural Network | 5.68 | 20.00 | 87.61 |
Sentinel-2 | Random Forest | 2.31 | 30.14 | 89.41 |
Sensor | Classifier | Commission Error (%) | Omission Error (%) | Overall Accuracy (%) |
---|---|---|---|---|
WorldView-2 | Convolutional Neural Network | 20.72 | 28.34 | 81.15 |
WorldView-2 | Random Forest | 0.60 | 38.33 | 84.50 |
Sentinel-2 | Convolutional Neural Network | 13.12 | 41.32 | 79.90 |
Sentinel-2 | Random Forest | 15.22 | 41.57 | 79.15 |
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Chénier, R.; Sagram, M.; Omari, K.; Jirovec, A. Earth Observation and Artificial Intelligence for Improving Safety to Navigation in Canada Low-Impact Shipping Corridors. ISPRS Int. J. Geo-Inf. 2020, 9, 383. https://doi.org/10.3390/ijgi9060383
Chénier R, Sagram M, Omari K, Jirovec A. Earth Observation and Artificial Intelligence for Improving Safety to Navigation in Canada Low-Impact Shipping Corridors. ISPRS International Journal of Geo-Information. 2020; 9(6):383. https://doi.org/10.3390/ijgi9060383
Chicago/Turabian StyleChénier, René, Mesha Sagram, Khalid Omari, and Adam Jirovec. 2020. "Earth Observation and Artificial Intelligence for Improving Safety to Navigation in Canada Low-Impact Shipping Corridors" ISPRS International Journal of Geo-Information 9, no. 6: 383. https://doi.org/10.3390/ijgi9060383
APA StyleChénier, R., Sagram, M., Omari, K., & Jirovec, A. (2020). Earth Observation and Artificial Intelligence for Improving Safety to Navigation in Canada Low-Impact Shipping Corridors. ISPRS International Journal of Geo-Information, 9(6), 383. https://doi.org/10.3390/ijgi9060383