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I have some very large images. I don't want to load the whole image into memory, I just want to make a single pass through the image in row order. Is it possible to do this in Python/scipy?

EDIT: I'm using .PNG, but I could convert them to PPM, BMP or something else lossless.

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In many cases, yes, but it depends on the format of the image and the library you're using to read it. What format are your images? – Joe Kington Feb 16 '13 at 15:15
I'm using .PNG file format. – nickponline Feb 16 '13 at 15:22
TIFF would make it specially easy, but I don't think PIL supports reading TIFFs by bands. – Jaime Feb 16 '13 at 16:17

1 Answer 1

GDAL (with Python bindings) offers some very good drivers for this. Although its a geospatial package, it works fine with BMP and PNG for example. This example show how to load a PNG row by row:

import gdal

# only loads the dataset
ds = gdal.Open('D:\\my_large_image.png')

# read 1 row at the time
for row in range(ds.RasterYSize):
    row_data = ds.ReadAsArray(0,row,ds.RasterXSize,1)

ds = None # this closes the file

It gives you a Numpy array as a result, so ready for procesing. You could write any result in a similar fashion.

print type(row_data)
<type 'numpy.ndarray'>

print row_data.shape
(3, 1, 763)

print row_data
[[[  0   0 255 ..., 230 230   0]]

 [[  0   0 252 ..., 232 233   0]]

 [[  0   0 252 ..., 232 233   0]]]

Installing a package specific for reading might be a bit overkill if PIL or something else can do it. But its a robust option, i have processed images of 30000*30000 pixels like this.

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