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I have a file in GeoTIFF (geo-referenced TIFF image), which I can load in Python using GDAL and convert into a Numpy array, which my program then processes using the geo-referencing info taken from the file by GDAL.

Since I'd like to remove the GDAL dependency, I plan to serialize the GeoTIFF information to another file format (JSON comes to mind), with the following desireable requirements:

  • Small file size;
  • Fast access;
  • Random-access (slicing) if possible;
  • Numpy-friendly (doesn't need a fancy class or another module dependency to decode);
  • Simple/straightforward/"human-readable";
  • Could be easily used by other scripts in other languages, not cryptic;

JSON would work fine but I'm concerned it's not the smallest neither the fastest access format. Since the array type is uint16, binary could be an option. Pickle might be too cryptic. CSV would make difficult to separate the geo-referencing info (corner coordinates and resolution) from the grid values.

Thanks for reading!

share|improve this question
Is human readable a necessary requirement (you say later that binary is an option)? –  user545424 Jun 21 '12 at 23:54
You'll need to prioritise your requirements. Problem is GeoTIFF has all of these properties, if you have GDAL. It seems that implementing a suitable deserializer for a serialization you come up with will be at least as hard as installing GDAL. Sorry, comment isn't useful, but I've spent a while thinking about how you could do this and I can't think of anything sane. –  Hamish Jun 22 '12 at 1:12
Human readable could include some easily parsed binary structure (for example, filename_400x400.dat for an array with that shape. –  heltonbiker Jul 9 '12 at 13:01
@Hamish Currently I am actually trying to implement a GeoTIFF reader in pure python, also as a learning activity. That would be a one-off workload, since it frees me of having to install GDAL in EVERY machine I could possibly run my script. –  heltonbiker Jul 9 '12 at 13:15
Maybe tifffile.py, a pure Python TIFF file reader, could be useful? It's specialized on microscopy formats but is expandable. –  cgohlke Aug 31 '12 at 1:52

1 Answer 1

I'm not familiar with GeoTIFF information, but for storing flat data I'd highly recommend the hdf5 format, which has a nice set of python bindings called h5py. Here's a quick example, showing how easy it is to work with:

>>> import h5py
>>> f = h5py.File('data.hdf5')
>>> a = np.arange(12.0).reshape((4,3))
>>> a
array([[  0.,   1.,   2.],
       [  3.,   4.,   5.],
       [  6.,   7.,   8.],
       [  9.,  10.,  11.]])
>>> f.create_dataset('array', data=a)
<HDF5 dataset "array": shape (4, 3), type "<f8">
>>> f['array'].attrs['info'] = 'some data I want to store'
>>> f['array'].attrs['date'] = (6, 21, 2012)
>>> f.close()
>>> f = h5py.File('data.hdf5')
>>> f['array']
<HDF5 dataset "array": shape (4, 3), type "<f8">
>>> f['array'].value
array([[  0.,   1.,   2.],
       [  3.,   4.,   5.],
       [  6.,   7.,   8.],
       [  9.,  10.,  11.]])
>>> f['array'].attrs['info']
'some data I want to store'
>>> f['array'].attrs['date']
array([   6,   21, 2012])
share|improve this answer
Swaps GDAL dependency for hdf5? –  Hamish Jun 22 '12 at 1:00
doh! Yeah I glossed over the "I'd like to remove the dependency" part. Although, I guess it depends on why he wants to remove the GDAL dependency. –  user545424 Jun 22 '12 at 1:04
I'm keeping an eye on hdf5, since it is being recurringly mentioned, but the fact is: I am indeed avoiding any extra dependency, specially considering that my GeoTIFF file, and my use of it, are rather simple. Anyway, thank you a lot for your example, I plan to come back when the time comes to use HDF5. –  heltonbiker Jun 22 '12 at 13:55

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