Partially labelled semantic segmentation
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byungchan
el 1 de Oct. de 2020
Comentada: byungchan
el 10 de Oct. de 2020
Hi, I'm trying to use partially labelled images as a groud truth for the semantic segmentation training(there are lots of ambiguous regions in my images, so i am hoping to train only with the apparent regions; by inputting the class weight 0(techinically it was 10^-20 as I cannot input zero) to the unlabeled class in pixel classification layer)
And I found that the mini-batch accuracy is fluctuates around 35-40% and never converges.
Are there any ways i could fix this problem?
Is it related to excessive non-labeled regions?
I would appreciate any of your advice concerning this problem.
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Raunak Gupta
el 3 de Oct. de 2020
Hi,
Assigning zero class weight to unlabeled pixel will help in removing them from loss calculation during training however when the accuracy metrics are calculated after training, it will include all the pixels and thus giving random categories to unlabeled pixel (I am assuming there is more than 1 class in labeled pixels).
Instead I will recommend assigning a background category to unlabeled pixel and keeping the class weight same as labeled pixel so that network can assign proper categories to all the pixels (background pixel can also be trained). This way network will be more robust for all parts of the image. So, adding one more class named background to the previous classes may help you converge to a higher accuracy.
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