Automatic Methodology for Forest Fire Mapping with SuperDove Imagery
<p>Pre-fire (first column) and post-fire (second column) images for the four selected events: (<b>a</b>,<b>b</b>) north Attica; (<b>c</b>,<b>d</b>) Portbou; (<b>e</b>,<b>f</b>) Euboea; (<b>g</b>,<b>h</b>) Sierra de los Guájares.</p> "> Figure 1 Cont.
<p>Pre-fire (first column) and post-fire (second column) images for the four selected events: (<b>a</b>,<b>b</b>) north Attica; (<b>c</b>,<b>d</b>) Portbou; (<b>e</b>,<b>f</b>) Euboea; (<b>g</b>,<b>h</b>) Sierra de los Guájares.</p> "> Figure 2
<p>Scheme of the methodology to obtain the maps of burned area and fire severity.</p> "> Figure 3
<p>Processing of the DEM.</p> "> Figure 4
<p>Average differences between vegetation indices in pre- and post-fire images.</p> "> Figure 5
<p>Difference between pre- and post-fire images for different vegetation indices in north Attica area: (<b>a</b>) fire delimitation mask provided by CEMS, (<b>b</b>) EVI, (<b>c</b>) GEMI, (<b>d</b>) GNDVI1, (<b>e</b>) GNDVI2, (<b>f</b>) MSR, (<b>g</b>) NDVI, (<b>h</b>) SAVI, (<b>i</b>) SR, (<b>j</b>) WDRVI, and (<b>k</b>) YNDVI.</p> "> Figure 5 Cont.
<p>Difference between pre- and post-fire images for different vegetation indices in north Attica area: (<b>a</b>) fire delimitation mask provided by CEMS, (<b>b</b>) EVI, (<b>c</b>) GEMI, (<b>d</b>) GNDVI1, (<b>e</b>) GNDVI2, (<b>f</b>) MSR, (<b>g</b>) NDVI, (<b>h</b>) SAVI, (<b>i</b>) SR, (<b>j</b>) WDRVI, and (<b>k</b>) YNDVI.</p> "> Figure 6
<p>Comparative visualization of the burned areas computed using the described methodology (in black) and those extracted from the CEMS report (in red) for the fires in (<b>a</b>) north Attica, (<b>b</b>) Portbou, (<b>c</b>) Euobea, and (<b>d</b>) Sierra de los Guájeres.</p> "> Figure 7
<p>Detailed views of discrepancy in burned-area edges. The red line delineates the fire’s extent as per CEMS data, contrasting with the yellow line that maps the area using the specified methodology: (<b>a</b>) pre-fire, (<b>b</b>) post-fire.</p> "> Figure 8
<p>Synthetized severity maps computed using the proposed methodology: (<b>a</b>) north Attica, (<b>b</b>) Portbou, (<b>c</b>) Euobea, and (<b>d</b>) Sierra de los Guájeres.</p> "> Figure 8 Cont.
<p>Synthetized severity maps computed using the proposed methodology: (<b>a</b>) north Attica, (<b>b</b>) Portbou, (<b>c</b>) Euobea, and (<b>d</b>) Sierra de los Guájeres.</p> ">
Abstract
:1. Introduction
2. Materials and Methods
2.1. Materials
- Parnitha Mountain is located north of Attica in Greece. It is an area of great ecological and cultural importance for Greece due to its rich biodiversity, water resources, historical value, and recreational potential that make it an invaluable asset to the region. A fire started on 22 August 2023, near the Kleiston monastery in that area, causing the destruction of houses and vehicles in the suburb of Fyli. The impact of the fire was significant: it burned more than 6000 hectares of land and potentially affected many buildings [36].
- Portbou is in the Alto Ampurdán region, in the province of Gerona, Catalonia, Spain. It is a town on the border with France, located on the Mediterranean coast, about 10 km from the French border. A wildfire hit the area on 4 August 2023. The significance of the fire arises from its location in a border city near residential areas, threatening both natural habitats and human populations. The fire destroyed about 500 hectares, mainly of vegetation cover [37].
- The island of Euboea is in Greece, off the eastern coast of the Aegean Sea. It has great importance due to its diverse natural resources, its tourist attractions, and its rich biodiversity. In this sense, it is a habitat for many birds, reptiles, and mammals, including some endangered species. A fire started on 21 August 2023 and spread widely, covering a wide front that threatened valuable forests and farmland. The fire burned an area of more than 500 hectares [38].
- Sierra de Los Guajares is in the province of Granada in southern Spain. It is an area of environmental importance that has a notable variety of plant and animal life, many of which are threatened. The area is of great economic interest due to its use for farming and hunting, and its cultural heritage. A devastating wildfire swept through the region in September 2022, burning more than 5000 hectares of land, mostly forests [39].
2.2. Vegetation Index Selection
2.3. Methodology for Burn-Area and Severity Mapping
3. Results
3.1. Selected Vegetation Index
3.2. Burned-Area Maps
3.3. Severity Maps
4. Discussion
5. Conclusions
- This study presents an automatic methodology to map burned areas and assess fire severity using images from the SuperDove sensor of the PlanetScope constellation. The methodology leverages vegetation indices and a combination of clustering algorithms to precisely delineate burned areas and classify them according to severity levels.
- The results highlight the importance of appropriately selecting vegetation indices to accurately assess burned areas and wildfire severity. The indices that performed best in this study were NDVI and YNDVI, as they provided a clear distinction between burned areas and unaffected vegetation and were less susceptible to radiometric problems.
- The SuperDove sensor, despite lacking an SWIR band, demonstrated effective mapping of burned areas when combined with specific vegetation indices and clustering algorithms.
- Regarding severity mapping, the results of the SuperDove sensor in conjunction with this methodology, in contrast to the common approach provided by the CEMS, are not compelling and imply the need for future research exploring ground truth.
- The methodology developed in this study enables a temporally detailed monitoring of wildfires and has potential to improve current fire management strategies. The results were compared with CEMS data, indicating their usefulness in various scenarios.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Zone | Image Pre-Fire | Image Post-Fire | Number of Tiles |
---|---|---|---|
North Attica | 20 August 2023 | 12 September 2023 | 2 |
Portbou | 21 July 2023 | 7 August 2023 | 2 |
Euboea | 20 August 2023 | 23 August 2023 | 1 |
Sierra de los Guájares | 8 September 2022 | 5 October 2022 | 2 |
Name | Equation | Reference |
---|---|---|
Enhanced Vegetation Index (EVI) | [42] | |
Global Environmental Monitoring Index (GEMI) | ), where | [43] |
Green Normalized Difference Vegetation Index (GNDVI) | [44] | |
Modified Simple Ratio (MSR) | , donde | [45] |
Normalized Difference Vegetation Index (NDVI) | [46] | |
Simple Ratio (SR) | [47] | |
Soil-Adjusted Vegetation Index (SAVI) | [48] | |
Wide Dynamic Range Vegetation Index (WDRVI) | , where goes from 0.1 to 0.2 | [49] |
Yellow Normalized Difference Vegetation Index (YNDVI) | [50] |
Zone | Estimated Burned Area | CEMS Area Delimitation Data | Difference |
---|---|---|---|
North Attica | 4766.90 | 6076.21 | 1309.31 (21.55%) |
Portbou | 450.13 | 500.04 | 49.91 (9.98%) |
Euboea | 496.11 | 526.22 | 30.11 (5.72%) |
Sierra de los Guájares | 4131.95 | 5141.4 | 1009.45 (19.63%) |
Zone | Severity | Estimated Severity | CEMS Reports Severity |
---|---|---|---|
North Attica | Negligible to slight damage | 25% | 13% |
Moderately damaged | 15% | 48% | |
Highly damaged | 30% | 38% | |
Destroyed | 30% | 1% | |
Portbou | Negligible to slight damage | 34% | 83% |
Moderately damaged | 32% | 16% | |
Highly damaged | 24% | 1% | |
Destroyed | 10% | 0% | |
Euboea | Negligible to slight damage | 28% | 4% |
Moderately damaged | 32% | 0% | |
Highly damaged | 17% | 49% | |
Destroyed | 23% | 47% | |
Sierra de los Guájares | Negligible to slight damage | 32% | 12% |
Moderately damaged | 31% | 14% | |
Highly damaged | 25% | 54% | |
Destroyed | 12% | 20% |
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Rodríguez-Esparragón, D.; Gamba, P.; Marcello, J. Automatic Methodology for Forest Fire Mapping with SuperDove Imagery. Sensors 2024, 24, 5084. https://doi.org/10.3390/s24165084
Rodríguez-Esparragón D, Gamba P, Marcello J. Automatic Methodology for Forest Fire Mapping with SuperDove Imagery. Sensors. 2024; 24(16):5084. https://doi.org/10.3390/s24165084
Chicago/Turabian StyleRodríguez-Esparragón, Dionisio, Paolo Gamba, and Javier Marcello. 2024. "Automatic Methodology for Forest Fire Mapping with SuperDove Imagery" Sensors 24, no. 16: 5084. https://doi.org/10.3390/s24165084
APA StyleRodríguez-Esparragón, D., Gamba, P., & Marcello, J. (2024). Automatic Methodology for Forest Fire Mapping with SuperDove Imagery. Sensors, 24(16), 5084. https://doi.org/10.3390/s24165084