Deep Image Matting paper implementation in PyTorch.
"fc6" is clumpy, over 100 millions parameters, makes the model hard to converge. I guess it is the reason why the model (paper) has to be trained stagewisely.
Follow the instruction to contact author for the dataset.
Go to MSCOCO to download:
Go to PASCAL VOC to download:
Extract training images:
If you want to visualize during training, run in your terminal:
$ tensorboard --logdir runsThe Composition-1k testing dataset
It prints out average SAD and MSE errors when finished.
The alphamatting.com datasetDownload the evaluation datasets: Go to the Datasets page and download the evaluation datasets. Make sure you pick the low-resolution dataset.
Extract evaluation images:
Click to view whole images:
Download pre-trained Deep Image Matting Link then run:
若对您有帮助可给予小小的赞助~
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