from scipy.misc import imread
from matplotlib import pyplot

import cv2
from cv2 import cv

from SRM import SRM ## Module for Statistical Regional Segmentation

im = imread("lena.png") 
im2 = cv2.imread("lena.png")
print type(im), type(im2), im.shape, im2.shape 
## Prints <type 'numpy.ndarray'> <type 'numpy.ndarray'> (120, 120, 3) (120, 120, 3)

srm = SRM(im, 256)
segmented = srm.run()

srm2 = SRM(im2, 256)
segmented2 = srm2.run()

pic = segmented/256
pic2 = segmented2/256

pyplot.imsave("onePic.jpg", pic)

pic = pic.astype('uint8')
cv2.imwrite("onePic2.jpg", pic2)


onePic.jpg gives the correct segmented image but onePic2.jpg gives a complete black image. Converting the datatype to uint8 using pic = pic.astype('uint8') did not help. I still gives a black image!

onePic.jpg using pyplot.imsave():

enter image description here

onePic2.jpg using cv2.imwrite():

enter image description here

Please help!


Before converting pic to uint8, you need to multiply it by 255 to get the correct range.

  • 2
    Hi Could you write a deeper explanation for this with more information about depth images, data types and normalization of images? I am also working on a similar project. It'd be really helpful – Kathiravan Natarajan Mar 16 at 19:10
  • you saved my life bro thanks ♥ – Jamal Al-kelani Apr 30 at 21:31

Although I agree with @sansuiso, in my case I found a possible edge case where my images were being shifted either one bit up in the scale or one bit down.

Since we're dealing with unsigned ints, a single shift means a possible underflow/overflow, and this can corrupt the whole image.

I found cv2's convertScaleAbs with an alpha value of 255.0 to yield better results.

def write_image(path, img):
    # img = img*(2**16-1)
    # img = img.astype(np.uint16)
    # img = img.astype(np.uint8)
    img = cv.convertScaleAbs(img, alpha=(255.0))
    cv.imwrite(path, img)

This answer goes into more detail.

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