# Back Projection using openCV for python

I am using openCV for Python, the cv2 library. I use the following function to compute the histogram of an image im_converted

hist = cv2.calcHist([im_converted], channels, None, histSize, ranges,hist, 1)


where im_converted is loaded as a numpy array of type uint8.

hist seems to be forced to be a numpy array of type float32. A problem arises when I use the backprojection function. (note: I normalize the histogram s.t np.sum(hist)=1)

backProj = cv2.calcBackProject([im_converted], channels, hist, ranges,scale);


The documentation is here. backProj is forced to be an uint8 numpy array.

• if scale=1, then backProj = 0
• if scale=255 then backProj is non zero, but the values are very small.

My question is: what is the scale factor that should be applied, given the differences between the types? Isn't there a way of changing the types? (note: I tried to do hist=zeros(histSize, dtype=uint8) but this was unsuccessful, I still got a float32 histogram in the end.)

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It seems line OpenCV forces the datatype of the returned image from calcBackProject to be the same as image passed in. If you pass in a uint8 image but your float32 histogram has values larger than 255 your backprojection image may be clipped.
The most sane way of doing this appears to be keep the scale = 1.0 but pass in a float32 image to calcBackProject:
backProj = cv2.calcBackProject([im_converted.astype('float32')], channels, hist, ranges,scale)
The other alternative is to pass in uint8 image but set the scale to be 255. / hist.max(). Thus 255 in your backprojected image will correspond to the most frequent color.