I am trying to convert a normalised RGB image to HSV or LAB colour space. Here is the normalisation function:enter image description here

here is the basic code

print ('original image shape: ', image.shape)
print ('normlaised image shape: ', needed_multi_channel_img.shape)
# Converting to LAB color space

lab_image = cv.cvtColor(needed_multi_channel_img, cv.COLOR_RGB2HSV)


Here is the output trace:

    /home/centura/gitlab/Acne_model/Acne Model/rosaceaexperiment1.py:82: RuntimeWarning: invalid value encountered in true_divide
/home/centura/gitlab/Acne_model/Acne Model/rosaceaexperiment1.py:82: RuntimeWarning: divide by zero encountered in true_divide
original image shape:  (375, 600, 3)
normlaised image shape:  (375, 600, 3)
Traceback (most recent call last):
  File "/home/centura/gitlab/Acne_model/Acne Model/rosaceaexperiment1.py", line 121, in <module>
    lab_image = cv.cvtColor(needed_multi_channel_img, cv.COLOR_RGB2HSV)
cv2.error: OpenCV(3.4.3) /io/opencv/modules/imgproc/src/color.hpp:257: error: (-2:Unspecified error) in function 'cv::CvtHelper<VScn, VDcn, VDepth, sizePolicy>::CvtHelper(cv::InputArray, cv::OutputArray, int) [with VScn = cv::Set<3, 4>; VDcn = cv::Set<3>; VDepth = cv::Set<0, 5>; cv::SizePolicy sizePolicy = (cv::SizePolicy)2u; cv::InputArray = const cv::_InputArray&; cv::OutputArray = const cv::_OutputArray&]'
> Unsupported depth of input image:
>     'VDepth::contains(depth)'
> where
>     'depth' is 6 (CV_64F)

For zero division error, I have replaced it with 0 and nan is also replaced with 0.

I also searched through StackOverflow but could not find any information to debug it. I do not understand the meaning of this error and how to rectify it.

  • 8
    your image type is CV_64F (float64) which is not supported by cvtColor function. Convert the image to an appropriate type, e.g. float32 – Miki Mar 15 '19 at 9:49
  • 1
    is there a simple way to convert it to float32. – Danish Xavier Mar 15 '19 at 10:11
  • 1
    like any other numpy array, with astype – Miki Mar 15 '19 at 10:12
  • 1
    i tried it normal_image[:,:,0] = normal_image[:,:,0].astype(np.float32) normal_image[:,:,1] = normal_image[:,:,1].astype(np.float32) normal_image[:,:,2] = normal_image[:,:,2].astype(np.float32) still the error persists. – Danish Xavier Mar 15 '19 at 10:18
  • Is there any other method. I am still getting error @Miki – Danish Xavier Mar 15 '19 at 10:34

According to this answer https://stackoverflow.com/a/45956247/7683041, try:

img_float32 = np.float32(needed_multi_channel_img)
lab_image = cv.cvtColor(img_float32, cv.COLOR_RGB2HSV)

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.