Single-Stage Semantic Segmentation from Image Labels
We attain competitive results by training a single network model for segmentation in a self-supervised fashion using only image-level annotations
semantic-segmentation single-stage conditional-random-fields pascal-voc computer-vision segmentation code self-supervised-learning tutorial research

We attain competitive results by training a single network model for segmentation in a self-supervised fashion using only image-level annotations (one run of 20 epochs on Pascal VOC).

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