NCNet Re-implementation on Pytorch 1.0 + Python3.6 (Original implementation : https://github.com/ignacio-rocco/ncnet) For more information check out their project website and their paper on arXiv.
More visual results can be found here
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|---|---|---|---|---|
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To download Pre-trained feature extractor (ResNet 18 ):
cd model/FeatureExtractor
bash download.shTo download PF Pascal Dataset :
cd data/pf-pascal/
bash download.shFor important functions, we provide a quick search here
To train on PF-Pascal :
bash demo_train.shTo evaluate on PF-Pascal :
bash demo_eval.sh













