Comments (3)
The equation is from this paper:
I got it from the original paper: Check out this issue on the Caffe implementation:
alexgkendall/SegNet-Tutorial#31
we weight each pixel by Îąc = median freq/freq(c) where freq(c) is the number of pixels of class c divided by the total number of pixels in images where c is present, and median freq is the median # of these frequencies. _
from keras-segnet-basic.
thanks for your reply. The above information cleared my doubt.
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coo beans, i will close the ticket
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