I am working with 2D floating-point numpy arrays that I would like to save to greyscale .png files with high precision (e.g. 16 bits). I would like to do this using the scikit-image
skimage.io package if possible.
Here's the main thing I've tried:
import numpy as np from skimage import io, exposure, img_as_uint, img_as_float im = np.array([[1., 2.], [3., 4.]], dtype='float64') im = exposure.rescale_intensity(im, out_range='float') im = img_as_uint(im) im
array([[ 0, 21845], [43690, 65535]], dtype=uint16)
First I tried saving this as an image then reloading using the Python Imaging Library:
# try with pil: io.use_plugin('pil') io.imsave('test_16bit.png', im) im2 = io.imread('test_16bit.png') im2
array([[ 0, 85], [170, 255]], dtype=uint8)
So somewhere (in either the write or read) I have lost precision. I then tried with the matplotlib plugin:
# try with matplotlib: io.use_plugin('matplotlib') io.imsave('test_16bit.png', im) im3 = io.imread('test_16bit.png') im3
gives me a 32-bit float:
array([[ 0. , 0.33333334], [ 0.66666669, 1. ]], dtype=float32)
but I doubt this is really 32-bits given that I saved a 16-bit uint to the file. It would be great if someone could point me to where I'm going wrong. I would like this to extend to 3D arrays too (i.e. saving 16 bits per colour channel, for 48 bits per image).
The problem is with imsave. The images are 8 bits per channel. How can one use io.imsave to output a high bit-depth image?