1

I have an image from cv2.matchTemplate that is float range -1,1:

res = cv2.matchTemplate(img_gray,template,cv2.TM_CCOEFF_NORMED)

res has values like: [[ 0.00730964 -0.00275442 -0.02477949 ... -0.16014284 -0.13686109 -0.13015044]

I can see graycale map of pattern matching with:

cv2.imshow("Match", res)

However I want to see in colormap, using:

resC = cv2.applyColorMap(res, cv2.COLORMAP_JET)

Using this I immediately have issues like: "cv::ColorMap only supports source images of type CV_8UC1 or CV_8UC3 in function 'operator()'"

So I try skimage convertion:

from skimage import img_as_ubyte
res = img_as_ubyte(res)

or

from skimage import exposure
res = exposure.rescale_intensity(res, out_range=(0, 255))

With them I get outputs like: [[48 46 42 ... 14 19 20] [52 56 54 ... 22 28 30]

Better now, integers. However, something is wrong cause I get only (blue) monochrome colormaps, not the nice ones from cv2.COLORMAP_JET range. It seems is shifted somehow.

Any hints on how to convert from -1,1 to 0,255 properly?

5

why this doesn't work:

I don't think this function is doing the rescaling you are hoping for. Consider the example from the reference manual below:

>>> image = np.array([-10, 0, 10], dtype=np.int8)
>>> rescale_intensity(image, out_range=(0, 127))
array([  0,  63, 127], dtype=int8)

It maps the minimum number in the input array to 0 and the largest number to 1. If you don't have the exact values of -1, and 1 in your input array then using this function will not work.


what you can do instead:

I recommend writing a simple function to rescale the values from -1 to 1 into 0 to 255:

>>> image = np.random.uniform(-1,1,(3,3))
>>> scaled = (image + 1)*255/2.
>>> image
array([[ 0.59057256,  0.01683666, -0.24498247],
       [-0.25144806, -0.32312655, -0.02319944],
       [ 0.50878506, -0.04102033,  0.3094886 ]])
>>> scaled
array([[ 202.79800129,  129.64667417,   96.26473544],
       [  95.44037187,   86.3013643 ,  124.54207199],
       [ 192.37009459,  122.26990741,  166.95979601]])

How it works:

  • image + 1 shifts all numbers to the [0,2] range
  • (image +1)/2. scales all numbers to [0,1]
  • (image +1)*255/2. scales the numbers from [0,1] to [0,255]
  • 1
    Great. Worked very fine, Thank you! – dpetrini Aug 2 '18 at 2:32
  • 1
    I only added "scaled = np.uint8(scaled)" to truncate decimals. So that I can use standard opencv image manipulations. – dpetrini Aug 2 '18 at 10:40

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.