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Article

English

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http://hdl.handle.net/10261/206299

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Fusion of WorldView-2 and LiDAR data to map fuel types in the Canary Islands

Abstract

Wildland fires are one of the factors causing the deepest disturbances on the natural environment and severely threatening many ecosystems, as well as economic welfare and public health. Having accurate and up-to-date fuel type maps is essential to properly manage wildland fire risk areas. This research aims to assess the viability of combining Geographic Object-Based Image Analysis (GEOBIA) and the fusion of a WorldView-2 (WV2) image and low density Light Detection and Ranging (LiDAR) data in order to produce fuel type maps within an area of complex orography and vegetation distribution located in the island of Tenerife (Spain). Independent GEOBIAs were applied to four datasets to create four fuel type maps according to the Prometheus classification. The following fusion methods were compared: Image Stack (IS), Principal Component Analysis (PCA) and Minimum Noise Fraction (MNF), as well as the WV2 image alone. Accuracy assessment of the maps was conducted by comparison against the fuel types assessed in the field. Besides global agreement, disagreement measures due to allocation and quantity were estimated, both globally and by fuel type. This made it possible to better understand the nature of disagreements linked to each map. The global agreement of the obtained maps varied from 76.23% to 85.43%. Maps obtained through data fusion reached a significantly higher global agreement than the map derived from the WV2 image alone. By integrating LiDAR information with the GEOBIAs, global agreement improvements by over 10% were attained in all cases. No significant differences in global agreement were found among the three classifications performed on WV2 and LiDAR fusion data (IS, PCA, MNF). These study's findings show the validity of the combined use of GEOBIA, high-spatial resolution multispectral data and low density LiDAR data in order to generate fuel type maps in the Canary Islands. We thank Alejandro Lorenzo-Gil for preprocessing the LiDAR data and Laia Núñez for her assistance in the field. Thanks to Mar Brito for editing the manuscript and improving the use of English. LiDAR data were ceded by GRAFCAN. We wish to thank the peer reviewers for their valuable comments and suggestions. This work has been funded by the Ministerio de Economía y Competitividad CGL2013-48202-C2 project. The research of L. A. Arroyo was supported by the JAE-Doc Program (Junta para la Ampliación de Estudios), financed by the Spanish National Research Council (CSIC) and the European Social Fund (ESF)

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