Sea-Based Infrared Scene Interpretation by Background Type Classification and Coastal Region Detection for Small Target Detection
Abstract
:1. Introduction
2. Proposed Infrared Scene Interpretation System
2.1. Properties of the Sea-Based IRST Background
- The shapes of the sky, coast and sea regions are wide, because the imaging view point is slanted.
- The order of the background is predictable, such as sky-sea, sky-coast-sea and sky-coast. The reverse order is not permitted.
- A lower coast region generally occludes other remote regions due to the geometry of the camera projection.
2.2. Infrared Background Type Classification
2.3. Coastal Region Detection
3. Experimental Results
Dataset | Sky-Sea | Cluttered Remote Coast | Cluttered Near Coast | Accuracy (%) |
---|---|---|---|---|
Set 1 | 60/60 | 60/60 | 100/110 | 95.6% (220/230) |
Set 2 | 42/42 | 294/315 | 126/126 | 95.7% (463/484) |
Test scene | Proposed | Mean-Shift Segmentation [28] | Statistical Region Mergin [35] | |||
---|---|---|---|---|---|---|
DR [%] | DR [%] | DR [%] | ||||
Set 1:Scene 1 | 19/19 | 100% | 19/19 | 100% | 19/19 | 100% |
Set 1:Scene 2 | 19/19 | 100% | 2/19 | 10.5% | 19/19 | 100% |
Set 1:Scene 3 | 16/19 | 84.2% | 0/19 | 0% | 0/19 | 0% |
Set 2:Scene 1 | 17/17 | 100% | 2/17 | 11.8% | 0/19 | 0% |
Set 2:Scene 2 | 19/19 | 100% | 0/19 | 0% | 19/19 | 100% |
Set 2:Scene 3 | 18/19 | 94.7% | 16/19 | 84.2% | 17/19 | 89.4% |
Overall | 108/112 | 96.4% | 39/112 | 34.8% | 74/112 | 66.0% |
DB Types | Performance Measure | With Coast Information by the Proposed Method Temporal Filter (TCF [37]) | Without Coast Information Spatial Filter (Top-Hat [5]) |
---|---|---|---|
Synthetic | Detection rate | 97.7% (171/175) | 89.7% (157/175) |
DB | FAR | 0/image | 54/image |
WIGcraft | Detection rate | 98.3% (60/61) | 85.3% (52/61) |
DB | FAR | 0/image | 65/image |
4. Conclusions and Discussion
Acknowledgments
Author Contributions
Conflicts of Interest
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Kim, S. Sea-Based Infrared Scene Interpretation by Background Type Classification and Coastal Region Detection for Small Target Detection. Sensors 2015, 15, 24487-24513. https://doi.org/10.3390/s150924487
Kim S. Sea-Based Infrared Scene Interpretation by Background Type Classification and Coastal Region Detection for Small Target Detection. Sensors. 2015; 15(9):24487-24513. https://doi.org/10.3390/s150924487
Chicago/Turabian StyleKim, Sungho. 2015. "Sea-Based Infrared Scene Interpretation by Background Type Classification and Coastal Region Detection for Small Target Detection" Sensors 15, no. 9: 24487-24513. https://doi.org/10.3390/s150924487
APA StyleKim, S. (2015). Sea-Based Infrared Scene Interpretation by Background Type Classification and Coastal Region Detection for Small Target Detection. Sensors, 15(9), 24487-24513. https://doi.org/10.3390/s150924487