Skip to content

Latest commit

 

History

History
115 lines (89 loc) · 4.09 KB

README.md

File metadata and controls

115 lines (89 loc) · 4.09 KB

Code for the AAAI18 paper PixelLink: Detecting Scene Text via Instance Segmentation, by Dan Deng, Haifeng Liu, Xuelong Li, and Deng Cai.

Contributions to this repo are welcome, e.g., some other backbone networks (including the model definition and pretrained models).

PLEASE CHECK EXSITING ISSUES BEFORE OPENNING YOUR OWN ONE. IF A SAME OR SIMILAR ISSUE HAD BEEN POSTED BEFORE, JUST REFER TO IT, AND DO NO OPEN A NEW ONE.

Installation

Clone the repo

git clone --recursive git@github.com:ZJULearning/pixel_link.git

Denote the root directory path of pixel_link by ${pixel_link_root}.

Add the path of ${pixel_link_root}/pylib/src to your PYTHONPATH:

export PYTHONPATH=${pixel_link_root}/pylib/src:$PYTHONPATH

Prerequisites

(Only tested on) Ubuntu14.04 and 16.04 with:

  • Python 2.7
  • Tensorflow-gpu >= 1.1
  • opencv2
  • setproctitle
  • matplotlib

Anaconda is recommended to for an easier installation:

  1. Install Anaconda
  2. Create and activate the required virtual environment by:
conda env create --file pixel_link_env.txt
source activate pixel_link

Testing

Download the pretrained model

Unzip the downloaded model. It contains 4 files:

  • config.py
  • model.ckpt-xxx.data-00000-of-00001
  • model.ckpt-xxx.index
  • model.ckpt-xxx.meta

Denote their parent directory as ${model_path}.

Test on ICDAR2015

The reported results on ICDAR2015 are:

Model Recall Precision F-mean
PixelLink+VGG16 2s 82.0 85.5 83.7
PixelLink+VGG16 4s 81.7 82.9 82.3

Suppose you have downloaded the ICDAR2015 dataset, execute the following commands to test the model on ICDAR2015:

cd ${pixel_link_root}
./scripts/test.sh ${GPU_ID} ${model_path}/model.ckpt-xxx ${path_to_icdar2015}/ch4_test_images

For example:

./scripts/test.sh 3 ~/temp/conv3_3/model.ckpt-38055 ~/dataset/ICDAR2015/Challenge4/ch4_test_images

The program will create a zip file of detection results, which can be submitted to the ICDAR2015 server directly. The detection results can be visualized via scripts/vis.sh.

Here are some samples: ./samples/img_333_pred.jpg ./samples/img_249_pred.jpg

Test on any images

Put the images to be tested in a single directory, i.e., ${image_dir}. Then:

cd ${pixel_link_root}
./scripts/test_any.sh ${GPU_ID} ${model_path}/model.ckpt-xxx ${image_dir}

For example:

 ./scripts/test_any.sh 3 ~/temp/conv3_3/model.ckpt-38055 ~/dataset/ICDAR2015/Challenge4/ch4_training_images

The program will visualize the detection results directly on images. If the detection result is not satisfying, try to:

  1. Adjust the inference parameters like eval_image_width, eval_image_height, pixel_conf_threshold, link_conf_threshold.
  2. Or train your own model.

Training

Converting the dataset to tfrecords files

Scripts for converting ICDAR2015 and SynthText datasets have been provided in the datasets directory. It not hard to write a converting script for your own dataset.

Train your own model

  • Modify scripts/train.sh to configure your dataset name and dataset path like:
DATASET=icdar2015
DATASET_DIR=$HOME/dataset/pixel_link/icdar2015
  • Start training
./scripts/train.sh ${GPU_IDs} ${IMG_PER_GPU}

For example, ./scripts/train.sh 0,1,2 8.

The existing training strategy in scripts/train.sh is configured for icdar2015, modify it if necessary. A lot of training or model options are available in config.py, try it yourself if you are interested.

Acknowlegement