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The image I am reading is output by a 14-bit instrument.

When using IDL function, the DN number saturate around 16000 although the PNG is a 16-bit. This make sense as I said the instrument is 14-bit.

However in Python when using PIL or the Pypng librairy loading the same image gives higher DN which are higher than 16000.

For example, a ~2000 DN in IDL is converted to ~30000 in Python. Do you have any explanation for that?

This is the code I used with PyPNG

import png
imageData = './120904151111.40.png'
pngObj = png.Reader(imageData) 
tmp = pngObj.read_flat()
data = np.array(tmp[2])
data2d = np.reshape(tmp[2], (pngObj.height ,pngObj.width))
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Maybe there is gAMA value stored in PNG? –  Arpegius Sep 19 '12 at 11:14
thanks for the reply. Do you have any idea where I could find this value in the file. Google did not really help so far. –  user1415226 Sep 19 '12 at 15:03
r=png.Reader(file=urllib.urlopen('http://www.schaik.com/pngsuite/basn0g02.png')‌​) ; r.read() gives (32, 32, <itertools.imap object at 0x10b7eb0>, {'greyscale': True, 'alpha': False, 'interlace': 0, 'bitdepth': 2, 'gamma': 1.0}) in my case I do not have any gamma value. –  user1415226 Sep 19 '12 at 15:09
(I am the maintainer of PyPNG) This is curious. Do you have an example image available anywhere? You can email me one if it's information you would rather not release. –  David Jones Oct 12 '12 at 8:01

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