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This is the implementation of BES (Weakly supervised Semantic Segmentation with Boundary Exploration), that is published in ECCV 2020.

Python 100.00%
segmentation weakly-supervised-learning

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bes's Issues

Model output for train_bes

Hi
In train_bes, the output for the model per image is stored in predict. It has a size of 128 x 128 per image.
what exactly is it?
How can i turn it into something of size 1 x 20 that shows the probability of a label existing in an image

model

We will release the trained model later.

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