Code for generating synthetic text images as described in "Synthetic Data for Text Localisation in Natural Images", Ankush Gupta, Andrea Vedaldi, Andrew Zisserman, CVPR 2016.
Synthetic Scene-Text Image Samples
The code in the master
branch is for Python2. Python3 is supported in the python3
branch.
The main dependencies are:
pygame, opencv (cv2), PIL (Image), numpy, matplotlib, h5py, scipy
python gen.py --viz
This will download a data file (~56M) to the data
directory. This data file includes:
- dset.h5: This is a sample h5 file which contains a set of 5 images along with their depth and segmentation information. Note, this is just given as an example; you are encouraged to add more images (along with their depth and segmentation information) to this database for your own use.
- data/fonts: three sample fonts (add more fonts to this folder and then update
fonts/fontlist.txt
with their paths). - data/newsgroup: Text-source (from the News Group dataset). This can be subsituted with any text file. Look inside
text_utils.py
to see how the text inside this file is used by the renderer. - data/models/colors_new.cp: Color-model (foreground/background text color model), learnt from the IIIT-5K word dataset.
- data/models: Other cPickle files (char_freq.cp: frequency of each character in the text dataset; font_px2pt.cp: conversion from pt to px for various fonts: If you add a new font, make sure that the corresponding model is present in this file, if not you can add it by adapting
invert_font_size.py
).
This script will generate random scene-text image samples and store them in an h5 file in results/SynthText.h5
. If the --viz
option is specified, the generated output will be visualized as the script is being run; omit the --viz
option to turn-off the visualizations. If you want to visualize the results stored in results/SynthText.h5
later, run:
python visualize_results.py
A dataset with approximately 800000 synthetic scene-text images generated with this code can be found here.
Segmentation and depth-maps are required to use new images as background. Sample scripts for obtaining these are available here.
predict_depth.m
MATLAB script to regress a depth mask for a given RGB image; uses the network of Liu etal. However, more recent works (e.g., this) might give better results.run_ucm.m
andfloodFill.py
for getting segmentation masks using gPb-UCM.
For an explanation of the fields in dset.h5
(e.g.: seg
,area
,label
), please check this comment.
The 8,000 background images used in the paper, along with their segmentation and depth masks, have been uploaded here:
http://www.robots.ox.ac.uk/~vgg/data/scenetext/preproc/<filename>
, where, <filename>
can be:
imnames.cp
[180K]: names of filtered files, i.e., those files which do not contain textbg_img.tar.gz
[8.9G]: compressed image files (more than 8000, so only use the filtered ones in imnames.cp). md5 hash:3eac26af5f731792c9d95838a23b5047 bg_img.tar.gz
.depth.h5
[15G]: depth maps. md5 hash:af97f6e6c9651af4efb7b1ff12a5dc1b depth.h5
.seg.h5
[6.9G]: segmentation maps. md5 hash:1605f6e629b2524a3902a5ea729e86b2 seg.h5
.
Note: due to large size, depth.h5
is also available for download as 3-part split-files of 5G each.
These part files are named: depth.h5-00, depth.h5-01, depth.h5-02
. Download using the path above, and put them together using cat depth.h5-0* > depth.h5
.
use_preproc_bg.py
provides sample code for reading this data.
Note: I do not own the copyright to these images.
- @JarveeLee has modified the pipeline for generating samples with Chinese text here.
- @adavoudi has modified it for arabic/persian script, which flows from right-to-left here.
- @MichalBusta has adapted it for a number of languages (e.g. Bangla, Arabic, Chinese, Japanese, Korean) here.
- @gachiemchiep has adapted for Japanese here.
- @gungui98 has adapted for Vietnamese here.
- @youngkyung has adapted for Korean here.
Please refer to the paper for more information, or contact me (email address in the paper).