Abstract:
A new methodology for the generation of
flood hazard maps is presented fusing remote sensing and
volunteered geographical data. Water pixels are identified
utilizing a machine learning classification of two Landsat
remote sensing scenes, acquired before and during the
flooding event as well as a digital elevation model paired with
river gage data. A statistical model computes the probability
of flooded areas as a function of the number of adjacent
pixels classified as water. Volunteered data obtained through
Google news, videos and photos are added to modify the
contour regions. It is shown that even a small amount of
volunteered ground data can dramatically improve results.