Unsupervised Burned Area Mapping in a Protected Natural Site. An Approach Using SAR Sentinel-1 Data and K-mean Algorithm
Chapter
Publication Date:
2020
abstract:
This paper is focused on investigating the capabilities of SAR S-1 sensors for burned area mapping. To this aim, we analyzed S-1 data focusing on a fire that occurred on August 10th, 2017, in a protected natural site. An unsupervised classification, using a k-mean machine learning algorithm, was carried out, and the choice of an adequate number of clusters was guided by the calculation of the silhouette score. The ?NBR index calculated from optical S-2 based images was used to evaluate the burned area delimitation accuracy. The fire covered around 38.51 km2 and also affected areas outside the boundaries of the reserve. S-1 based outputs successfully matched the S-2 burnt mapping.
Iris type:
02.01 Contributo in volume (Capitolo o Saggio)
Keywords:
Burned area detection Sentinel-1; SAR Machine learning; K-mean clustering Silhouette score PCA; Radar burn difference (RBD); Radar burn ratio (RBR); Normalized burn ratio (NBR); Protected natural site; Forest fire
List of contributors:
Lasaponara, Rosa
Book title:
Computational Science and Its Applications - ICCSA 2020