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What is an efficient and clear way to read 16-bit PGM images in Python with numpy?

I cannot use PIL to load 16-bit PGM images due to a PIL bug. I can read in the header with the following code:

dt = np.dtype([('type', 'a2'),
               ('space_0', 'a1', ),
               ('x', 'a3', ),
               ('space_1', 'a1', ),
               ('y', 'a3', ),
               ('space_2', 'a1', ),
               ('maxval', 'a5')])
header = np.fromfile( 'img.pgm', dtype=dt )
print header

This prints the correct data: ('P5', ' ', '640', ' ', '480', ' ', '65535') But I have a feeling that is not quite the best way. And beyond that, I'm having trouble how to figure out how to read in the following data of x by y (in this case 640x480) by 16-bit with the offset of size(header).

EDIT: IMAGE ADDED

MATLAB code to read and display the image is:

I = imread('foo.pgm'); 
imagesc(I);

And looks like this:

enter image description here

share|improve this question
    
can you attach an example img.pgm? Off topic: checked your site; you might like to see this: seems you are not the only ones looking for warmer water around the arctic... (supporting evidence for your (coleages) thesis perhaps?) – Remi Sep 10 '11 at 1:37
    
PGM here: db.tt/phaR587 P.S. One doesn't have to look very hard to find these things... :(. – mankoff Sep 10 '11 at 2:03
up vote 6 down vote accepted
import re
import numpy

def read_pgm(filename, byteorder='>'):
    """Return image data from a raw PGM file as numpy array.

    Format specification: http://netpbm.sourceforge.net/doc/pgm.html

    """
    with open(filename, 'rb') as f:
        buffer = f.read()
    try:
        header, width, height, maxval = re.search(
            b"(^P5\s(?:\s*#.*[\r\n])*"
            b"(\d+)\s(?:\s*#.*[\r\n])*"
            b"(\d+)\s(?:\s*#.*[\r\n])*"
            b"(\d+)\s(?:\s*#.*[\r\n]\s)*)", buffer).groups()
    except AttributeError:
        raise ValueError("Not a raw PGM file: '%s'" % filename)
    return numpy.frombuffer(buffer,
                            dtype='u1' if int(maxval) < 256 else byteorder+'u2',
                            count=int(width)*int(height),
                            offset=len(header)
                            ).reshape((int(height), int(width)))


if __name__ == "__main__":
    from matplotlib import pyplot
    image = read_pgm("foo.pgm", byteorder='<')
    pyplot.imshow(image, pyplot.cm.gray)
    pyplot.show()
share|improve this answer
    
Very nice, but in the case of this test file, >u2 produces the wrong values (range 4098 to 65287) while u2 produces the correct values (528 to 2047). You mention big-endian in another comment. The data was produced on and I am reading on an Intel (little endian) chip. I presume it was written in native format. – mankoff Sep 10 '11 at 15:59
    
The specification says "The most significant byte is first.", which is big endian. See also en.wikipedia.org/wiki/Netpbm_format#16-bit_extensions. – cgohlke Sep 10 '11 at 19:43
    
Matlab reads the data as big endian, so the image shown in your question would be wrong(?). You can always swap the bytes later if you are reading a non-standard file. – cgohlke Sep 10 '11 at 19:52
    
Added a byteorder parameter to the function. – cgohlke Sep 10 '11 at 20:09
    
Yup you are right. The data is written in little-endian, contrary to the spec. My image looks correct but with a colorbar it is clearly scaled wrong. – mankoff Sep 10 '11 at 21:58

I'm not terribly familar with the PGM format, but generally speaking you'd just use numpy.fromfile. fromfile will start at whatever position the file pointer you pass to it is at, so you can simply seek (or read) to the end of the header, and then use fromfile to read the rest in.

You'll need to use infile.readline() instead of next(infile).

import numpy as np

with open('foo.pgm', 'r') as infile:
    header = infile.readline()
    width, height, maxval = [int(item) for item in header.split()[1:]]
    image = np.fromfile(infile, dtype=np.uint16).reshape((height, width))

On a side note, the "foo.pgm" file you pointed to in your comment appears to specify the wrong number of rows in the header.

If you're going to be reading in a lot of files that potentially have that problem, you can just pad the array with zeros or truncate it, like this.

import numpy as np

with open('foo.pgm', 'r') as infile:
    header = next(infile)
    width, height, maxval = [int(item) for item in header.split()[1:]]
    image = np.fromfile(infile, dtype=np.uint16)
    if image.size < width * height:
        pad = np.zeros(width * height - image.size, dtype=np.uint16)
        image = np.hstack([image, pad])
    if image.size > width * height:
        image = image[:width * height]
    image = image.reshape((height, width))

share|improve this answer
    
quite elegant, and works for mankoffs binary! I only got weird output when testing it on a standard string formatted pgm file... – Remi Sep 10 '11 at 3:20
    
@Remi - Yeah, I didn't intend it for an ascii pgm file. However, it's quite simple to use np.loadtxt or something similar in that case. – Joe Kington Sep 10 '11 at 3:29
    
Close but still a bug. The file is 614417 bytes long which is equal to 640*480*2 + 17, which is a 17 byte header and a 640x480 two-byte (16 bit) data. The image displays properly decoded as such manually in other languages (IDL), and using built-in routines elsewhere (GIMP, MATLAB). I will post a version of the image in the question shortly. Sorry for not providing all this info initially, I'm figuring it out too as I go... – mankoff Sep 10 '11 at 3:52
    
OK I got it. Change next(infile) to infile.read(17). But what if I don't want to hard-code this? It will work, all my PGMs are the same, but it would be nice to get it right. Anyway, thank you for the solution so far. – mankoff Sep 10 '11 at 4:00
    
More details: f = open('foo.pgm'); h=next(f); print f.tell() prints 8192, while f = open('foo.pgm'); h=f.read(17); print f.tell() prints 17. – mankoff Sep 10 '11 at 4:10

Thanks to the answer by @joe-kington for helping figure this out. The solution follows.

There is a little bit of extra work to not hard-code the known header length (17 bytes in this case), but to determine it from the header. The PGM standard says that the header usually ends with a newline but can end with any whitespace. I think this code will break on a PGM that uses non-newline whitespace for the end-of-header delimeter. Header size in this case would be determined by the size of variables holding width, height, and maxsize, plus two bytes for 'P5', plus 4 bytes of whitespace.

Other cases where this might break are if the width or height are larger than an int (very big image). Or if the PGM is 8-bit rather than 16-bit (which can be determined from maxval, and possible width, height, and the filesize).

#!/usr/bin/python
import numpy as np
import matplotlib.pyplot as plt

file='foo.pgm'
infile = open(file,'r')
header = next(infile)
width, height, maxval = [int(item) for item in header.split()[1:]]
infile.seek(len(header))
image = np.fromfile(infile, dtype=np.uint16).reshape((height, width))
print width, height, maxval
plt.figimage(image)
share|improve this answer
    
Gongratulations, very smooth! Should have gone to bed all along I guess... – Remi Sep 10 '11 at 5:18
2  
The dtype should be big endian. – cgohlke Sep 10 '11 at 6:33

from here I understand that the header information can be separated by either spaces, carriage returns or others. If yours is separated by spaces (inform me if otherwise) you can do:

with open('img.pgm') as f:
    lines = f.readlines()
    data = np.array([line.split() for line in lines[1:]], dtype=np.int16).T

your data is now an array in int16 format!

Suppose you are still interested in the header information, you can do:

class Header(object):
    def __init__(self, type, width, height, maxval):
        self.type = type
        self.width = int(width)
        self.height = int(height)
        self.maxval = int(maxval)

h = Header(*lines[0].split()[:4])

so that you can check the image data against the read lines:

assert (h.width, h.height) == data.shape    
assert h.maxval >= data.max()

Edit: with the image data being binary, the file has to be opened as 'rb' and read from after the header information:

import numpy as np

def as_array(filepath):
    f = open(filepath, 'r')
    w, h = size = tuple(int(v) for v in next(f).split()[1:3])
    data_size = w * h * 2

    f.seek(0, 2)
    filesize = f.tell()
    f.close()
    i_header_end = filesize - (data_size)

    f = open(filepath, 'rb')
    f.seek(i_header_end)
    buffer = f.read()
    f.close()

    # convert binary data to an array of the right shape
    data = np.frombuffer(buffer, dtype=np.uint16).reshape((w, h))

    return data

a = as_array('foo.pgm')
share|improve this answer
    
I think the link you attached describes my format correctly. However, I have the P5 "raw" format (the more common one, described first). The header is ASCII, but the data below is binary, and it seems that readlines() is failing because of this. – mankoff Sep 10 '11 at 2:05
    
Right. readlines() reads one line, but the interpretion of that line has to be via np.fromstring(), or, like you and Joe Kington propose, directly with np.fromfile() since you know it is binary anyway. There is another problem however: see my second answer – Remi Sep 10 '11 at 3:23

Indeed, the 'string' after the header is a binary in your file. I solved that below (found the following: ndarray: [2047 2047 2047 ..., 540 539 539]) but there is another problem: the file is not long enough; counts only 289872 numbers instead of 640*480...

I am terribly sorry for my exageration by making a class for it...

import numpy as np
import Image

class PGM(object):
    def __init__(self, filepath):

        with open(filepath) as f:

            # suppose all header info in first line:
            info = f.readline().split()
            self.type = info[0]
            self.width, self.height, self.maxval = [int(v) for v in info[1:]]
            size = self.width * self.height

            lines = f.readlines()
            dt = [np.int8, np.int16][self.maxval > 255]
            try:
                # this will work if lines are integers separated by e.g. spaces
                self.data = np.array([l.split() for l in lines], dtype=dt).T
            except ValueError:
                # data is binary
                data = np.fromstring(lines[0], dtype=dt)
                if data.size < size:
                    # this is the case for the 'db.tt/phaR587 (foo.pgm)'
                    #raise ValueError('data binary string probably uncomplete')
                    data = np.hstack((data, np.zeros(size-data.size)))
                self.data = data[:size].reshape((self.width, self.height))

            assert (self.width, self.height) == self.data.shape
            assert self.maxval >= self.data.max()

        self._img = None

    def get_img(self):
        if self._img is None:
            # only executed once
            size = (self.width, self.height)
            mode = 'L'
            data = self.data
            self.img = Image.frombuffer(mode, size, data)

        return self.img

    Image = property(get_img)

mypgm = PGM('foo.pgm')

mypgm.Image

edit: great Idea from Joe Kington to fill image with zeros!

share|improve this answer
    
File is long enough. I think readline() is reading too much. Perhaps some of the binary is on the first line too? – mankoff Sep 10 '11 at 4:04

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