4

You see, most of the posts that discuss image creation deal with a 3D Matrix[0][1][2] that effectively contains the necessary info to apply directly

img = Image.fromarray(Matrix, 'RGB')

However, I'm stuck with a massive matrix that has "3n" columns and "n" rows. As you might see, the "image" is coded in a fashion reminding me of P3/P6 formats:

[ 0 0 0 255 255 255 0 0 0
  0 0 0 255 255 255 0 0 0 
  255 255 255 0 0 0 255 255 255]

The above 2D matrix represents 3x3 "pixels", and using Image.fromarray produces an image full of holes. I've thinking of splitting it into three (!!!) 2 dimensional arrays and then using np.dstack but that sounds terribly inefficient as the code is dinamically generating thousands of matrices with large dimensions (700x2100) that need to be presented as images.

This is what I'm thinking of doing, btw:

R = np.zeros((Y, X), dtype = np.uint8) # Same for G & B
    for Row in range(Y):
        for Column in range(3*X):
            if Column % 3 == 0: # With Column-1 for G and -2 for B
                R[Row][Column/3] = 2DMatrix[Row][Column]
#After populating R, G, B
RGB0 = np.dstack([R, G, B])
img = Image.fromarray(RGB0, 'RGB')

Thanks!

1
  • Given a 2D Matrix w/ the discussed characteristics (Y x 3X) and an image that'll have (Y, X) expected pixels, R = np.zeros((Y, X), dtype = np.uint8) # Same for G & B for Row in range(Y): for Column in range(3*X): if Column % 3 == 0: # With Column-1 for G and -2 for B R[Row][Column/3] = 2DMatrix[Row][Column] #After populating R, G, B RGB = np.dstack([R, G, B]) img = Image.fromarray(RGB, 'RGB')
    – J. Castro
    Nov 10 '16 at 15:03
3

numpy.reshape should work for this. It's also important that the color values are 8-bit unsigned:

>>> import numpy as np

>>> a = [[0, 0, 0, 255, 255, 255, 0, 0, 0],
...      [0, 0, 0, 255, 255, 255, 0, 0, 0],
...      [255, 255, 255, 0, 0, 0, 255, 255, 255]]
>>> a = np.array(a)
>>> a.astype('u1').reshape((3,3,3))

array([[[  0,   0,   0],
        [255, 255, 255],
        [  0,   0,   0]],

       [[  0,   0,   0],
        [255, 255, 255],
        [  0,   0,   0]],

       [[255, 255, 255],
        [  0,   0,   0],
        [255, 255, 255]]], dtype=uint8)

>>> import PIL.Image
>>> i = PIL.Image.fromarray(a.astype('u1').reshape((3,3,3)), 'RGB')

This seems to work the way we would expect:

>>> i.size
(3, 3)
>>> i.getpixel((0,0))
(0, 0, 0)
>>> i.getpixel((1,0))
(255, 255, 255)
>>> i.getpixel((2,0))
(0, 0, 0)
>>> i.getpixel((0,1))
(0, 0, 0)
>>> i.getpixel((1,1))
(255, 255, 255)
>>> i.getpixel((2,1))
(0, 0, 0)
>>> i.getpixel((0,2))
(255, 255, 255)
>>> i.getpixel((1,2))
(0, 0, 0)
>>> i.getpixel((2,2))
(255, 255, 255)
2
  • Thank you! This seems to work like a charm. Just one thing: for an image of X rows and Y columns, should I reshape as .reshape(Y, X, 3) , right? Because it then seems weird that the convention for displaying pixels and arrays is exactly the opposite when using i.getpixel . Cheers,
    – J. Castro
    Nov 10 '16 at 15:31
  • Yes, reshape((Y, X, 3)) should do what you want. Nov 10 '16 at 15:38

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