International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecasting real-time fire behavior using thermal-infrared imaging data. One key challenge in data assimilation lies in the design of an adequate measure to represent the discrepancies between observed and simulated firelines (or "fronts"). A first approach consists in adopting a Lagrangian description of the flame front and in computing a Euclidean distance between simulated and observed fronts by pairing each observed marker with its closest neighbor along the simulated front. However, this front marker registration approach is difficult to generalize to complex front topology that can occur when fire propagation conditions are highly heterogeneous...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceData-driven wildfire spread modeling is emerging as a cornerstone for forecast...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...
International audienceWe present a shape-oriented data assimilation strategy suitable for front-trac...