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TextField: Learning A Deep Direction Field for Irregular Scene Text Detection (TIP 2019)

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TextField: Learning A Deep Direction Field for Irregular Scene Text Detection

Introduction

The code and trained models of:

TextField: Learning A Deep Direction Field for Irregular Scene Text Detection, TIP 2019 [Paper]

Citation

Please cite the related works in your publications if it helps your research:


@article{xu2018textfield,
  title={TextField: Learning A Deep Direction Field for Irregular Scene Text Detection},
  author={Xu, Yongchao and Wang, Yukang and Zhou, Wei and Wang, Yongpan and Yang, Zhibo and Bai, Xiang},
  journal={arXiv preprint arXiv:1812.01393},
  year={2018}
}

Prerequisite

Usage

1. Install Caffe

cp Makefile.config.example Makefile.config
# adjust Makefile.config (for example, enable python layer)
make all -j16
# make sure to include $CAFFE_ROOT/python to your PYTHONPATH.
make pycaffe

Please refer to Caffe Installation to ensure other dependencies.

2. Data and model preparation

# download datasets and pretrained model then
mkdir data && mv [your_dataset_folder] data/
mkdir models && mv [your_pretrained_model] models/

3. Training scripts

# an example on Total-Text dataset
cd examples/TextField/
python train.py --gpu [your_gpu_id] --dataset total --initmodel ../../models/synth_iter_800000.caffemodel

4. Evaluation scripts

# an example on Total-Text dataset
cd evaluation/total/
./eval.sh

Results and Trained Models

Total-Text

Recall Precision F-measure Link
0.816 0.824 0.820 [Google drive]

*lambda=0.50 for post-processing

ICDAR2015

Recall Precision F-measure Link
0.811 0.846 0.828 [Google drive]

*lambda=0.75 for post-processing

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  • C++ 80.2%
  • Python 9.2%
  • Cuda 5.7%
  • CMake 2.8%
  • MATLAB 0.9%
  • Makefile 0.7%
  • Other 0.5%