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Referring Image Segmentation via Recurrent Refinement Networks

This code implements the model described in Referring Image Segmentation via Recurrent Refinement Networks, CVPR 2018.

Setup

This code derives from TF-phrasecut-public. Please follow its Setup and Data Preparation sections except that the DeepLab-ResNet backbone comes from tensorflow-deeplab-resnet. The pre-trained DeepLab-ResNet model can be downloaded from here.

Usage

Before training, make sure refer, cocoapi, and deeplab are in PYTHONPATH.

export PYTHONPATH=./external/refer:./external/cocoapi/PythonAPI:./external/tensorflow-deeplab-resnet:$PYTHONPATH

To train a model on UNC dataset, run

python main_convlstm_p543.py -m train -d unc -t train -f ckpts/unc

To test the model with Dense CRF, run

python main_convlstm_p543.py -m test -d unc -t testA -f ckpts/unc -i 700000 -c

Cite

If you use this code, please consider citing

@inproceedings{li2018referring,
  title={Referring Image Segmentation via Recurrent Refinement Networks},
  author={Li, Ruiyu and Li, Kaican and Kuo, Yi-Chun and Shu, Michelle and Qi, Xiaojuan and Shen,
      Xiaoyong and Jia, Jiaya},
  booktitle={CVPR},
  year={2018}
}