DESCRIPTION
r.import imports a map or selected bands from a GDAL raster datasource
into the current location and mapset. If the projection of the input
does not match the projection of the location, the input is reprojected
into the current location. If the projection of the input does match
the projection of the location, the input is imported directly with
r.in.gdal.
NOTES
r.import checks the projection metadata of the dataset to be
imported against the current location's projection. If not identical a
related error message is shown.
To override this projection check (i.e. to use current location's projection)
by assuming that the dataset has the same projection as the current location
the -o flag can be used. This is also useful when geodata to be
imported do not contain any projection metadata at all. The user must be
sure that the projection is identical in order to avoid to introduce data
errors.
Resolution
r.import reports the estimated target resolution for each
input band. The estimated resolution will usually be some floating
point number, e.g. 271.301. In case option resolution is set to
estimated (default), this floating point number will be used
as target resolution. Since the target resolution should be typically the rounded
estimated resolution, e.g. 250 or 300 instead of 271.301, flag -e
can be used first to obtain the estimate without importing the raster bands.
Then the desired resolution is set with option resolution_value
and option resolution=value.
For latlong locations, the resolution might be set to arc seconds, e.g. 1, 3, 7.5,
15, and 30 arc seconds are commonly used resolutions.
Resampling methods
When reprojecting a map to a new spatial reference system, the projected
data is resampled with one of four different methods: nearest neighbor,
bilinear, bicubic iterpolation or lanczos.
In the following common use cases:
nearest is the simplest method and the only possible method for
categorical data.
bilinear does linear interpolation and provides smoother output
than nearest. bilinear is recommended when reprojecting a
DEM for hydrological analysis or for surfaces where overshoots must be
avoided, e.g. precipitation should not become negative.
bicubic produces smoother output than bilinear, at
the cost of overshoots.
lanczos produces the smoothest output of all methods and
preserves contrast best. lanczos is recommended for imagery.
Both bicubic and lanczos preserve linear features. With
nearest or bilinear, linear features can become zigzag
features after reprojection.
For explanation of the -l flag, please refer to the
r.in.gdal manual.
When importing whole-world maps the user should disable map-trimming with
the -n flag. For further explanations of -n flag, please refer
the to r.proj manual.
EXAMPLES
Import of SRTM V3 global data at 1 arc-seconds resolution
The SRTM V3 1 arc-second global data (~30 meters resolution) are available
from EarthExplorer (http://earthexplorer.usgs.gov/).
The SRTM collections are located under the "Digital Elevation" category.
Example for North Carolina sample dataset (the tile name is "n35_w079_1arc_v3.tif"):
# set computational region to e.g. 10m elevation model:
g.region raster=elevation -p
# Import with reprojection on the fly. Recommended parameters:
# resample Resampling method to use for reprojection - bilinear
# extent Output raster map extent - region: extent of current region
# resolution Resolution of output raster map
# - region: current region resolution - limit to g.region setting from above
r.import input=n35_w079_1arc_v3.tif output=srtmv3_resamp10m resample=bilinear \
extent=region resolution=region title="SRTM V3 resampled to 10m resolution"
# beautify colors:
r.colors srtmv3_resamp10m color=elevation
Import of WorldClim data
Import of a subset from WorldClim Bioclim data set,
to be reprojected to current location projection (North Carolina sample dataset).
Different resolutions are available, in this example we use the 2.5 arc-minutes
resolution data. During import, we spatially subset the world data to the
North Carolina region using the extent parameter:
# download selected Bioclim data (2.5 arc-minutes resolution)
# optionally tiles are available for the 30 arc-sec resolution
wget http://biogeo.ucdavis.edu/data/climate/worldclim/1_4/grid/cur/bio_2-5m_bil.zip
# extract BIO1 from package (BIO1 = Annual Mean Temperature):
unzip bio_2-5m_bil.zip bio1.bil bio1.hdr
# prior to import, fix broken WorldClim extent using GDAL tool
gdal_translate -a_ullr -180 90 180 -60 bio1.bil bio1_fixed.tif
# set computational region to North Carolina, 4000 m target pixel resolution
g.region -d res=4000 -ap
# subset to current region and reproject on the fly to current location projection,
# using -n since whole-world map is imported:
r.import input=bio1_fixed.tif output=bioclim01 resample=bilinear \
extent=region resolution=region -n
# temperature data are in °C * 10
r.info bioclim01
r.univar -e bioclim01
SEE ALSO
r.in.gdal,
r.proj
AUTHORS
Markus Metz
Improvements: Martin Landa, Anna Petrasova
Last changed: $Date$