SAR/optical data fusion for flood detection

Author(s):  
A. D'Addabbo ◽  
A. Refice ◽  
G. Pasquariello ◽  
F. Lovergine
Author(s):  
Mykhailo O. Popov ◽  
Sergey A. Stankevich ◽  
Sergey P. Mosov ◽  
Olga V. Titarenko ◽  
Maksym V. Topolnytskyi ◽  
...  

2015 ◽  
Vol 46 ◽  
pp. 436-450 ◽  
Author(s):  
Giancarmine Fasano ◽  
Domenico Accardo ◽  
Anna Elena Tirri ◽  
Antonio Moccia ◽  
Ettore De Lellis

Author(s):  
B. Tavus ◽  
S. Kocaman ◽  
H. A. Nefeslioglu ◽  
C. Gokceoglu

Abstract. The frequency of flood events has increased in recent years most probably due to the climate change. Flood mapping is thus essential for flood modelling, hazard and risk analyses and can be performed by using the data of optical and microwave satellite sensors. Although optical imagery-based flood analysis methods have been often used for the flood assessments before, during and after the event; they have the limitation of cloud coverage. With the increasing temporal availability and spatial resolution of SAR (Synthetic Aperture Radar) satellite sensors, they became popular in data provision for flood detection. On the other hand, their processing may require high level of expertise and visual interpretation of the data is also difficult. In this study, a fusion approach for Sentinel-1 SAR and Sentinel-2 optical data for flood extent mapping was applied for the flood event occurred on August 8th, 2018, in Ordu Province of Turkey. The features obtained from Sentinel-1 and Sentinel-2 processing results were fused in random forest supervised classifier. The results show that Sentinel-2 optical data ease the training sample selection for the flooded areas. In addition, the settlement areas can be extracted from the optical data better. However, the Sentinel-2 data suffer from clouds which prevent from mapping of the full flood extent, which can be carried out with the Sentinel-1 data. Different feature combinations were evaluated and the results were assessed visually. The results are provided in this paper.


2019 ◽  
Vol 11 (2) ◽  
pp. 161 ◽  
Author(s):  
Joshua Montgomery ◽  
Brian Brisco ◽  
Laura Chasmer ◽  
Kevin Devito ◽  
Danielle Cobbaert ◽  
...  

The objective of this study was to develop a decision-based methodology, focused on data fusion for wetland classification based on surface water hydroperiod and associated riparian (transitional area between aquatic and upland zones) vegetation community attributes. Multi-temporal, multi-mode data were examined from airborne Lidar (Teledyne Optech, Inc., Toronto, ON, Canada, Titan), synthetic aperture radar (Radarsat-2, single and quad polarization), and optical (SPOT) sensors with near-coincident acquisition dates. Results were compared with 31 field measurement points for six wetlands at riparian transition zones and surface water extents in the Utikuma Regional Study Area (URSA). The methodology was repeated in the Peace-Athabasca Delta (PAD) to determine the transferability of the methods to other boreal environments. Water mask frequency analysis showed accuracies of 93% to 97%, and kappa values of 0.8–0.9 when compared to optical data. Concordance results comparing the semi-permanent/permanent hydroperiod between 2015 and 2016 were found to be 98% similar, suggesting little change in wetland surface water extent between these two years. The results illustrate that the decision-based methodology and data fusion could be applied to a wide range of boreal wetland types and, so far, is not geographically limited. This provides a platform for land use permitting, reclamation monitoring, and wetland regulation in a region of rapid development and uncertainty due to climate change. The methodology offers an innovative time series-based boreal wetland classification approach using data fusion of multiple remote sensing data sources.


Author(s):  
A. D'Addabbo ◽  
A. Refice ◽  
G. Pasquariello ◽  
F. Lovergine ◽  
S. Manfreda

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