A PyTorch implement of TextSnake: A Flexible Representation for Detecting Text of Arbitrary Shapes (ECCV 2018) by Face++
- Paper link: arXiv:1807.01544
- Github: princewang1994/TextSnake.pytorch
- Blog: TextSnake: A Flexible Representation for Detecting Text of Arbitrary Shapes
Comparison of different representations for text instances. (a) Axis-aligned rectangle. (b) Rotated rectangle. (c) Quadrangle. (d) TextSnake. Obviously, the proposed TextSnake representation is able to effectively and precisely describe the geometric properties, such as location, scale, and bending of curved text with perspective distortion, while the other representations (axis-aligned rectangle, rotated rectangle or quadrangle) struggle with giving accurate predictions in such cases.
Text snake element:
- center point
- tangent line
- text region
Generally, this code has following features:
- include complete training and inference code
- pure python version without extra compiling
- compatible with laste PyTorch version (write with pytroch 0.4.0)
- support TotalText dataset
This repo includes the training code and inference demo of TextSnake, training and infercence can be simplely run with a few code.
To run this repo successfully, it is highly recommanded with:
- Linux (Ubuntu 16.04)
- Python3.6
- Anaconda3
- NVIDIA GPU(with 8G or larger GPU memory for training, 2G for inference)
(I haven't test it on other Python version.)
- clone this repository
git clone https://github.com/princewang1994/TextSnake.pytorch.git
- python package can be installed with
pip
$ cd $TEXTSNAKE
$ pip install -r requirements.txt
Total-Text
: follow the total_text/README.md
Training model with given experiment name $EXPNAME
$ EXPNAME=example
$ CUDA_VISIBLE_DEVICES=$GPUID python train.py $EXPNAME --viz
options:
exp_name
: experiment name, used to identify different training process--viz
: visualization toggle, output pictures are saved to './vis' by default
other options can be show by run python train.py -h
Runing following command can generate demo on TotalText dataset (300 pictures), the result are save to ./vis
by default
$ EXPNAME=example
$ CUDA_VISIBLE_DEVICES=$GPUID python demo.py --checkepoch 190
options:
exp_name
: experiment name, used to identify different training process
other options can be show by run python train.py -h
- left: prediction
- middle: text region(TR)
- right: text center line(TCL)
- Pretrained model upload (soon)
- More dataset suport: [ICDAR15/SynthText]
- Metric computing
- Cython/C++ accelerate core functions
This project is licensed under the MIT License - see the LICENSE.md file for details
This project is writen by Prince Wang, part of codes refer to songdejia/EAST