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Code, demos and data for SketchParse (a neural network for sketch segmentation). Paper:

Home Page: https://arxiv.org/abs/1709.01295

License: MIT License

Python 7.79% CSS 0.26% JavaScript 24.14% HTML 0.79% Jupyter Notebook 31.48% MATLAB 23.82% C++ 11.73% M 0.01%
semantic-segmentation sketches pytorch deep-learning

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sketch-parse's Issues

Which model is the one that get the best performance?

Hi,

As you have uploaded too much models, I cannot tell which one is the model with the best performance. Can you tell me which one is the best? I think it should corresponds to the one named "BCP-R5" (63.17%) in Table 6 of your paper.

Thank you very much.

Train model with new data

Hi,
I want to train model again with my data. My data is sketch of human object with 14 parts segmentation (hair, face, arm, leg,shoes, dress, skirt...). could you give me some suggestions to get good result for this new data? so far my result is not good.
This is example of my sketch and segmentation of human object:
10_a
10_a
Thanks

Requesting for Caffe folder

Hi, when i run "table1.py" with my caffe folder, it got this error "ImportError: /home/vipgpu/trang/caffe/python/caffe/../../build/lib/libcaffe.so.1.0.0: undefined symbol:_ZN5caffe20hdf5_load_nd_datasetIdEEvlPKciiPNS_4BlobIT_EEb"
Can you upload your your caffe folder which you used in this project?

Thanks

'unexpected key "pose_r0.PoseC1.0.weight" in state_dict'

Hi, I tried to run "Retrieval-demo.ipynb" in 'retrieval-src" folder to get segment for sketch. But i dunno why it got this error "unexpected key "pose_r0.PoseC1.0.weight" in state_dict" when loading model using this command: "model.load_state_dict(saved_state_dict)".
Im sure that i downloaded "model_r5_p50x_D1_17000.pth" file and it is in correct folder.
Do you have any suggestion?
Thanks

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