An Automatic Procedure for Forest Fire Fuel Mapping Using Hyperspectral (PRISMA) Imagery: A Semi-Supervised Classification Approach

被引:23
|
作者
Shaik, Riyaaz Uddien [1 ]
Laneve, Giovanni [2 ]
Fusilli, Lorenzo [1 ]
机构
[1] Univ Roma La Sapienza, Dept Astronaut Elect & Energy Engn, I-00185 Rome, Italy
[2] Univ Roma La Sapienza, Sch Aerosp Engn, I-00138 Rome, Italy
关键词
forests; fires; fuel map; hyperspectral; LUCAS; machine learning; PRISMA; pseudolabels; SVM classifier; sample generation; OPERATIONAL SYSTEM; FEATURE-SELECTION;
D O I
10.3390/rs14051264
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Natural vegetation provides various benefits to human society, but also acts as fuel for wildfires. Therefore, mapping fuel types is necessary to prevent wildfires, and hyperspectral imagery has applications in multiple fields, including the mapping of wildfire fuel types. This paper presents an automatic semisupervised machine learning approach for discriminating between wildfire fuel types and a procedure for fuel mapping using hyperspectral imagery (HSI) from PRISMA, a recently launched satellite of the Italian Space Agency. The approach includes sample generation and pseudolabelling using a single spectral signature as input data for each class, unmixing mixed pixels by a fully constrained linear mixing model, and differentiating sparse and mountainous vegetation from typical vegetation using biomass and DEM maps, respectively. Then the procedure of conversion from a classified map to a fuel map according to the JRC Anderson Codes is presented. PRISMA images of the southern part of Sardinia, an island off Italy, were considered to implement this procedure. As a result, the classified map obtained an overall accuracy of 87% upon validation. Furthermore, the stability of the proposed approach was tested by repeating the procedure on another HSI acquired for part of Bulgaria and we obtained an overall stability of around 84%. In terms of repeatability and reproducibility analysis, a degree of confidence greater than 95% was obtained. This study suggests that PRISMA imagery has good potential for wildfire fuel mapping, and the proposed semisupervised learning approach can generate samples for training the machine learning model when there is no single go-to dataset available, whereas this procedure can be implemented to develop a wildfire fuel map for any part of Europe using LUCAS land cover points as input.
引用
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页数:25
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