Active Fire Mapping on Brazilian Pantanal Based on Deep Learning and CBERS 04A Imagery
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area and Imagery
2.2. Active Fire Detection Approach
2.3. Object Detection Methods
2.4. Experimental Setup
2.5. Method Assessment
3. Results and Discussion
3.1. Quantitative Analysis
3.2. Qualitative Analysis and Discussion
3.3. Comparison with BD Queimadas Database
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Date | Path | Row | Level | Date | Path | Row | Level |
---|---|---|---|---|---|---|---|
4 May 2020 | 214 | 140 | L4 | 21 July 2020 | 217 | 132 | L4 |
5 May 2020 | 220 | 132 | L2 | 21 July 2020 | 217 | 140 | L4 |
5 May 2020 | 220 | 140 | L2 | 22 July 2020 | 223 | 132 | L4 |
10 May 2020 | 219 | 140 | L4 | 26 July 2020 | 216 | 132 | L4 |
15 May 2020 | 218 | 140 | L4 | 26 July 2020 | 216 | 140 | L4 |
20 May 2020 | 217 | 132 | L4 | 27 July 2020 | 222 | 132 | L4 |
20 May 2020 | 217 | 140 | L4 | 27 July 2020 | 222 | 140 | L4 |
31 May 2020 | 221 | 140 | L4 | 31 July 2020 | 215 | 132 | L4 |
10 June 2020 | 219 | 132 | L4 | 1 August 2020 | 221 | 132 | L4 |
10 June 2020 | 219 | 140 | L4 | 1 August 2020 | 221 | 140 | L4 |
15 June 2020 | 218 | 132 | L4 | 5 August 2020 | 214 | 140 | L4 |
15 June 2020 | 218 | 140 | L4 | 6 August 2020 | 220 | 132 | L4 |
20 June 2020 | 217 | 132 | L4 | 6 August 2020 | 220 | 140 | L4 |
20 June 2020 | 217 | 140 | L4 | 10 August 2020 | 213 | 132 | L4 |
25 June 2020 | 216 | 132 | L4 | 10 August 2020 | 213 | 140 | L4 |
30 June 2020 | 215 | 132 | L4 | 11 August 2020 | 219 | 132 | L4 |
30 June 2020 | 215 | 140 | L4 | 11 August 2020 | 219 | 140 | L2 |
1 July 2020 | 221 | 132 | L4 | 15 August 2020 | 212 | 132 | L4 |
1 July 2020 | 221 | 140 | L4 | 16 August 2020 | 218 | 132 | L4 |
5 July 2020 | 214 | 140 | L4 | 26 August 2020 | 216 | 132 | L4 |
6 July 2020 | 220 | 132 | L4 | 26 August 2020 | 216 | 140 | L4 |
11 July 2020 | 219 | 132 | L4 | 27 August 2020 | 222 | 132 | L4 |
15 July 2020 | 212 | 140 | L4 | 31 August 2020 | 215 | 132 | L4 |
16 July 2020 | 218 | 132 | L4 | 31 August 2020 | 215 | 140 | L4 |
16 July 2020 | 218 | 140 | L4 |
Fold | Test | Train | Validation | |||
---|---|---|---|---|---|---|
Patches | Images | Patches | Images | Patches | Images | |
F1 | 79 (10%) | 10 | 497 (64%) | 28 | 199 (26%) | 10 |
F2 | 82 (11%) | 10 | 493 (64%) | 28 | 200 (26%) | 10 |
F3 | 187 (24%) | 10 | 437 (56%) | 28 | 151 (19%) | 10 |
F4 | 182 (23%) | 9 | 360 (46%) | 29 | 233 (30%) | 10 |
F5 | 245 (32%) | 9 | 371 (48%) | 29 | 159 (21%) | 10 |
Methods | Average Minimum Distances (±SD) |
---|---|
VFNET | 8.39 (±17.76) |
SABL Cascade RCNN | 9.58 (±18.41) |
PAA | 15.02 (±22.97) |
ATSS | 5.04 (±14.02) |
RetinaNet | 7.82 (±16.28) |
Faster RCNN | 9.80 (±19.41) |
Metric | (±SD) |
---|---|
Precision | 0.83 (±0.29) |
Recall | 0.91 (±0.23) |
F1-Score | 0.84 (±0.25) |
Average Minimum Distances | 11.12 (±16.25) |
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Higa, L.; Marcato Junior, J.; Rodrigues, T.; Zamboni, P.; Silva, R.; Almeida, L.; Liesenberg, V.; Roque, F.; Libonati, R.; Gonçalves, W.N.; et al. Active Fire Mapping on Brazilian Pantanal Based on Deep Learning and CBERS 04A Imagery. Remote Sens. 2022, 14, 688. https://doi.org/10.3390/rs14030688
Higa L, Marcato Junior J, Rodrigues T, Zamboni P, Silva R, Almeida L, Liesenberg V, Roque F, Libonati R, Gonçalves WN, et al. Active Fire Mapping on Brazilian Pantanal Based on Deep Learning and CBERS 04A Imagery. Remote Sensing. 2022; 14(3):688. https://doi.org/10.3390/rs14030688
Chicago/Turabian StyleHiga, Leandro, José Marcato Junior, Thiago Rodrigues, Pedro Zamboni, Rodrigo Silva, Laisa Almeida, Veraldo Liesenberg, Fábio Roque, Renata Libonati, Wesley Nunes Gonçalves, and et al. 2022. "Active Fire Mapping on Brazilian Pantanal Based on Deep Learning and CBERS 04A Imagery" Remote Sensing 14, no. 3: 688. https://doi.org/10.3390/rs14030688