I am working on a project in Python using GDAL to work on GIS rasters. These rasters or images can get rather large so I usually use memory mapping in Numpy to load them. Currently I want to do a distance transform operation on a memory mapped Numpy array. I was trying to use Scipy's distance_transform_edt function, however, this function returns a copy of the result in memory and I end up getting a memory error.

```
561, in distance_transform_dataset
dest_array = ndimage.distance_transform_edt(source_array) * pixel_size
File "/usr/local/lib/python2.7/dist-packages/scipy/ndimage/morphology.py", line 2173,
in distance_transform_edt
input = numpy.atleast_1d(numpy.where(input, 1, 0).astype(numpy.int8))
MemoryError
None
```

A lot of times functions like this will have an 'out' parameter to write the result to. This function does not, so I can't write to a memory mapped numpy array.

Any ideas on how to do a memory efficient distance transform calculation on a large numpy array would be greatly appreciated. Thanks.