Comments (4)
Could you please provide the sample reproducible code for the tests you have performed to investigate further on the issue.
from keras.
Hi, I already fixed the issue. Root cause was the datasets was the images and masks did not paired (happened intermittently) and image scaling was done incorrect (I used Scikit tranform.fit
on batch images instead of partial.fit
). So it was not Keras issue.
from keras.
Thanks for confirming, could you please close the issue as well. Thanks!
from keras.
Are you satisfied with the resolution of your issue?
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from keras.
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