A noGDAL tool for reading and writing geotiff files
Project description
geotiff
A noGDAL tool for reading geotiff files
WARNING this package is under development and some features are unstable. Use with caution.
Please support this project be giving it a star on GitHub!
What is noGDAL?
noGDAL is a philosophy for developing geospatial programs in python without using GDAL.
Installation
Installing this package is as easy as:
pip install geotiff
There is also an Anaconda-based package available, published on conda-forge:
conda install -c conda-forge python-geotiff
Usage
Making the GeoTiff object
from geotiff import GeoTiff
geo_tiff = GeoTiff(tiff_file)
This will detect the crs code. If it's 'user defined' and you know what it should be, you may supply a crs code:
geo_tiff = GeoTiff(tiff_file, crs_code=4326)
By default, the coordinates will be in WGS 84, however they can be specified by using the as_crs
param:
geo_tiff = GeoTiff(tiff_file, as_crs=7844)
Or you can use the original crs by setting as_crs
to None
:
geo_tiff = GeoTiff(tiff_file, as_crs=None)
If the geotiff file has multiple bands, you can specify which band to use:
geo_tiff = GeoTiff(tiff_file, band=1)
The default band is 0
Get information (properties) about the geotiff:
# the original crs code
geo_tiff.crs_code
# the current crs code
geo_tiff.as_crs
# the shape of the tiff
geo_tiff.tif_shape
# the bounding box in the as_crs CRS
geo_tiff.tif_bBox
# the bounding box as WGS 84
geo_tiff.tif_bBox_wgs_84
# the bounding box in the as_crs converted coordinates
geo_tiff.tif_bBox_converted
Get coordinates of a point/pixel:
i=5
j=6
# in the as_crs coords
geo_tiff.get_coords(i, j)
# in WGS 84 coords
geo_tiff.get_wgs_84_coords(i, j)
Read the data
To read the data, use the .read()
method. This will return a zarr array as often geotiff files cannot fit into memory.
zarr_array = geo_tiff.read()
If you are confident that the data will fit into memory, you can convert it to a numpy array:
import numpy as np
array = np.array(zarr_array)
Read a section of a large tiff
In many cases, you are only interested in a section of the tiff. For convenience, you can use the .read_box()
method. This will return a numpy array.
WARNING: This will fail if the box you are using is too large and the data cannot fit into memory.
from geotiff import GeoTiff
# in WGS 84
area_box = [(138.632071411, -32.447310785), (138.644218874, -32.456979174)]
geo_tiff = GeoTiff(tiff_file)
array = geo_tiff.read_box(area_box)
Note: For the area_box
, use the same crs as as_crs
.
In some cases, you may want some extra points/pixels around the outside of your area_box
. This may be useful if you want to interpolate to points near the area_box boundary. To achieve this, use the outer_points
param:
array = geo_tiff.read_box(area_box, outer_points=2)
This will get 2 extra perimeters of points around the outside of the the area_box
.
Getting bounding box information
There are also some helper methods to get the bounding box of the resulting cut array:
# col and row indexes of the cut area
int_box = geo_tiff.get_int_box(area_box)
# lon and lat coords of the cut points/pixels
wgs_84_box = geo_tiff.get_bBox_wgs_84(area_box)
Again, you can also get bounding box for an extra n layers of points/pixels that directly surround the area_box
:
# col and row indexes of the cut area
int_box = geo_tiff.get_int_box(area_box, outer_points = 2)
# lon and lat coords of the cut points/pixels
wgs_84_box = geo_tiff.get_bBox_wgs_84(area_box, outer_points = 2)
Get coordinates of a point/pixel
You may want to get the coordinates of a value in your array:
i=int_box[0][0] + 5
j=int_box[0][1] + 6
geo_tiff.get_wgs_84_coords(i, j)
Get coordinates of an array
You may want to simply get all the coordinates in the array:
array = geo_tiff.read_box(area_box, outer_points=2)
lon_array, lat_array = geo_tiff.get_coord_arrays(area_box, outer_points=2)
This will return two arrays that are in the same shape as the array from the read_box()
method. The output coords will be in the as_crs
crs.
If your tiff file is small and can fit into memory, simply:
lon_array, lat_array = geo_tiff.get_coord_arrays()
Contributing
If you would like to contribute to this project, please fork this repo and make a PR with your patches.
You can join the conversation by saying hi in the project discussion board.
To help users and other contributes, be sure to:
- make doc blocs if appropriate
- use typing wherever possible
- format with black
Note: The continuous integration has lint checking with mypy, so be sure to check it yourself before making a PR.
Project Road Map
Core Features
- read tiff files (including BigTiff)
- write tiff files (including BigTiff)
- convert between epsg coordinate systems
- read a user defined CRS
32767
from tiff file - cut a section (bounding box) of the tiff file
- convert the data to numpy arrays
Additional features
- (50%) Full test coverage
- Typing with lint checking using mypy
- Formatted with black
- Documentation: doc blocs
- Documentation: readthedocs
Project details
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