International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XXXIX-B7, 2012
XXII ISPRS Congress, 25 August — 01 September 2012, Melbourne, Australia
NRCS [dB] Probability
Figure 5: Joint probabilities for the imagery processed in this
study. a)Radarsat-2 27-Apr, b)Radarsat-2 01-May, c)Alos 01-
May, d)Alos 04-May. Alos results are enlarged for clarity.
4 CONCLUSIONS AND FUTURE WORK
More and more remote sensing data is becoming available ev-
ery day, some of which are applicable to the the detection of oil
spills. In this paper, we presented a method to combine SAR data
from multiple sensors, acquired at different times from different
geometries, to obtain a combined oil slick probability map for
the Deepwater Horizon oil spill. Furthermore, it is also possible
to combine results from different algorithms applied to the same
data set, to increase accuracy as presented in this paper.
Our fully automatic algorithm can be expanded to include other
sensors (e.g. optical, infra-red, hyperspectral), and can be cus-
tomized to the operational needs. The algorithm can operate with
any sensor and any algorithm that can provide a probability map.
The intuitive probability maps assist operators and ground per-
sonnel in determining which areas to prioritize. Expansion of the
algorithm to utilize MODIS imagery, and a neural-network based
SAR oil spill algorithm for a future study is currently under con-
sideration.
ACKNOWLEDGEMENTS
The authors would like to thank MDA Geospatial Services for
Radarsat-2 data, Alaska Satellite Facility for Alos-PALSAR data,
and the European Space Agency for Envisat-ASAR data.
66
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