Reputation:
I have a NumPy array of 3,076,568 binary values (1s and 0s). I would like to convert this to a matrix, and then to a grayscale image in Python.
However, when I try to reshape the array into a 1,538,284 x 1,538,284 matrix, I get a memory error.
How can I reduce the size of the matrix so that it will turn into an image that will fit on a screen without losing the uniqueness/data?
Furthermore, how would I turn it into a grayscale image?
Any help or advice would be appreciated. Thank you.
Upvotes: 12
Views: 65188
Reputation: 33407
Your array of "binary values" is an array of bytes?
If so, you can do (using Pillow) after resizing it:
from PIL import Image
im = Image.fromarray(arr)
And then im.show()
to see it.
If your array has only 0's and 1's (1-bit depth or b/w) you may have to multiply it to 255
im = Image.fromarray(arr * 255)
Here an example:
>>> arr = numpy.random.randint(0,256, 100*100) #example of a 1-D array
>>> arr.resize((100,100))
>>> im = Image.fromarray(arr)
>>> im.show()
Edit (2018):
This question was written in 2011 and Pillow changed ever since requiring to use the mode='L'
parameter when loading with fromarray
.
Also on comments below it was said arr.astype(np.uint8)
was needed as well, but I have not tested it
Upvotes: 23
Reputation: 143
If you have as example a txt file in your PC with some data (an image), in order to visualize such data as gray scale image you can use this:
with open("example.txt", "r") as f:
data = [i.strip("\n").split() for i in f.readlines()]
data1 = np.array(data, dtype=float)
plt.figure(1)
plt.gray()
plt.imshow(data1)
plt.show()
Upvotes: 1
Reputation: 363586
Using PIL is not really needed, you can plot the array directly with pyplot (see below). To save to a file, you could use plt.imsave('fname.png', im)
.
Code below.
import numpy as np
import matplotlib.pyplot as plt
x = (np.random.rand(1754**2) < 0.5).astype(int)
im = x.reshape(1754, 1754)
plt.gray()
plt.imshow(im)
You can also use plt.show(im)
to display image in new window.
Upvotes: 12
Reputation: 136875
You can do so with scipy.misc.toimage
and im.save("foobar.png")
:
#!/usr/bin/env python
# your data is "array" - I just made this for testing
width, height = 512, 100
import numpy as np
array = (np.random.rand(width*height) < 0.5).astype(int)
array = array.reshape(height, width)
# what you need
from scipy.misc import toimage
im = toimage(array)
im.save("foobar.png")
which gives
Upvotes: 3