• Stars
    star
    3,268
  • Rank 13,744 (Top 0.3 %)
  • Language
    Python
  • License
    MIT License
  • Created over 7 years ago
  • Updated 4 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

A synthetic data generator for text recognition

TextRecognitionDataGenerator CircleCI PyPI version codecov Documentation Status

A synthetic data generator for text recognition

What is it for?

Generating text image samples to train an OCR software. Now supporting non-latin text! For a more thorough tutorial see the official documentation.

What do I need to make it work?

Install the pypi package

pip install trdg

Afterwards, you can use trdg from the CLI. I recommend using a virtualenv instead of installing with sudo.

If you want to add another language, you can clone the repository instead. Simply run pip install -r requirements.txt

Docker image

If you would rather not have to install anything to use TextRecognitionDataGenerator, you can pull the docker image.

docker pull belval/trdg:latest

docker run -v /output/path/:/app/out/ -t belval/trdg:latest trdg [args]

The path (/output/path/) must be absolute.

New

  • Add --stroke_width argument to set the width of the text stroke (Thank you @SunHaozhe)
  • Add --stroke_fill argument to set the color of the text contour if stroke > 0 (Thank you @SunHaozhe)
  • Add --word_split argument to split on word instead of per-character. This is useful for ligature-based languages
  • Add --dict argument to specify a custom dictionary (Thank you @luh0907)
  • Add --font_dir argument to specify the fonts to use
  • Add --output_mask to output character-level mask for each image
  • Add --character_spacing to control space between characters (in pixels)
  • Add python module
  • Add --font to use only one font for all the generated images (Thank you @JulienCoutault!)
  • Add --fit and --margins for finer layout control
  • Change the text orientation using the -or parameter
  • Specify text color range using -tc '#000000,#FFFFFF', please note that the quotes are necessary
  • Add support for Simplified and Traditional Chinese

How does it work?

Words will be randomly chosen from a dictionary of a specific language. Then an image of those words will be generated by using font, background, and modifications (skewing, blurring, etc.) as specified.

Basic (Python module)

The usage as a Python module is very similar to the CLI, but it is more flexible if you want to include it directly in your training pipeline, and will consume less space and memory. There are 4 generators that can be used.

from trdg.generators import (
    GeneratorFromDict,
    GeneratorFromRandom,
    GeneratorFromStrings,
    GeneratorFromWikipedia,
)

# The generators use the same arguments as the CLI, only as parameters
generator = GeneratorFromStrings(
    ['Test1', 'Test2', 'Test3'],
    blur=2,
    random_blur=True
)

for img, lbl in generator:
    # Do something with the pillow images here.

You can see the full class definition here:

Basic (CLI)

trdg -c 1000 -w 5 -f 64

You get 1,000 randomly generated images with random text on them like:

1 2 3 4 5

By default, they will be generated to out/ in the current working directory.

Text skewing

What if you want random skewing? Add -k and -rk (trdg -c 1000 -w 5 -f 64 -k 5 -rk)

6 7 8 9 10

Text distortion

You can also add distorsion to the generated text with -d and -do

23 24 25

Text blurring

But scanned document usually aren't that clear are they? Add -bl and -rbl to get gaussian blur on the generated image with user-defined radius (here 0, 1, 2, 4):

11 12 13 14

Background

Maybe you want another background? Add -b to define one of the three available backgrounds: gaussian noise (0), plain white (1), quasicrystal (2) or image (3).

15 16 17 23

When using image background (3). A image from the images/ folder will be randomly selected and the text will be written on it.

Handwritten

Or maybe you are working on an OCR for handwritten text? Add -hw! (Experimental)

18 19 20 21 22

It uses a Tensorflow model trained using this excellent project by Grzego.

The project does not require TensorFlow to run if you aren't using this feature

Dictionary

The text is chosen at random in a dictionary file (that can be found in the dicts folder) and drawn on a white background made with Gaussian noise. The resulting image is saved as [text]_[index].jpg

There are a lot of parameters that you can tune to get the results you want, therefore I recommend checking out trdg -h for more information.

Create images with Chinese text

It is simple! Just do trdg -l cn -c 1000 -w 5!

Generated texts come both in simplified and traditional Chinese scripts.

Traditional:

27

Simplified:

28

Create images with Japanese text

It is simple! Just do trdg -l ja -c 1000 -w 5!

Output

29

Add new fonts

The script picks a font at random from the fonts directory.

Directory Languages
fonts/latin English, French, Spanish, German
fonts/cn Chinese
fonts/ko Korean
fonts/ja Japanese
fonts/th Thai

Simply add/remove fonts until you get the desired output.

If you want to add a new non-latin language, the amount of work is minimal.

  1. Create a new folder with your language two-letters code
  2. Add a .ttf font in it
  3. Edit run.py to add an if statement in load_fonts()
  4. Add a text file in dicts with the same two-letters code
  5. Run the tool as you normally would but add -l with your two-letters code

It only supports .ttf for now.

Benchmarks

Number of images generated per second.

  • Intel Core i7-4710HQ @ 2.50Ghz + SSD (-c 1000 -w 1)
    • -t 1 : 363 img/s
    • -t 2 : 694 img/s
    • -t 4 : 1300 img/s
    • -t 8 : 1500 img/s
  • AMD Ryzen 7 1700 @ 4.0Ghz + SSD (-c 1000 -w 1)
    • -t 1 : 558 img/s
    • -t 2 : 1045 img/s
    • -t 4 : 2107 img/s
    • -t 8 : 3297 img/s

Contributing

  1. Create an issue describing the feature you'll be working on
  2. Code said feature
  3. Create a pull request

Feature request & issues

If anything is missing, unclear, or simply not working, open an issue on the repository.

What is left to do?

  • Better background generation
  • Better handwritten text generation
  • More customization parameters (mostly regarding background)

More Repositories

1

pdf2image

A python module that wraps the pdftoppm utility to convert PDF to PIL Image object
Python
1,619
star
2

CRNN

A TensorFlow implementation of https://github.com/bgshih/crnn
Python
298
star
3

pdf2image-as-a-service

Deploying a basic application on GCP, AWS and Azure
Shell
59
star
4

ML-IDS

An IDS implementation using machine learning
Python
36
star
5

NRTR

A TensorFlow implementation of NRTR, a No-Recurrence Seq2Seq Model for Scene Text Recognition
Python
30
star
6

ki4a

SSH tunneling app with DNS forwarding. Based on https://github.com/staf621/ki4a
Java
28
star
7

NaiveCNN

A naive (very simple!) implementation of a convolutional neural network
Python
20
star
8

opencv-mser

A working example of OpenCV 3 MSER detector
Python
14
star
9

disklist

A python list implementation that uses the disk to handle very large collections
Python
14
star
10

MobileNetV3

A tensorflow implementation of the paper "Searching for MobileNetV3" with the R-ASPP segmentation head
Python
13
star
11

BitcoinRNN

A Recurrent Neural Network using Tensorflow to predict Bitcoin price
Python
11
star
12

AlphaMissenseCheck

See how pathogenic your mutations are according to AlphaMissense based on your 23andme raw data
Python
9
star
13

raytracing

Using CUDA to implement "Raytracing in one weekend" by Peter Shirley
Cuda
5
star
14

seal-rs

Experiments on using Microsoft SEAL library in Rust
Rust
4
star
15

air-quality-station

Combining the SNS011 sensor with an OrangePI to display PM2.5 and PM10 air quality measurements
Python
4
star
16

wikipedia2text

A tool to convert a Wikipedia dump file into plain text
Python
3
star
17

hdbscan

A go implementation of HDBSCAN
Go
3
star
18

dotfiles

Collection of dotfiles for vim, vscode, git, etc...
Shell
2
star
19

ebird

Detecting bird presence from satellite images
Python
2
star
20

TextRecognitionDataGeneratorDocs

Documentation for the TextRecognitionDataGenerator tool
JavaScript
2
star
21

Scanner3D

Using learned and non-learned algorithms to reconstruct 3D objects with the SR300 camera
Python
1
star
22

CubePlanet

Minecraft clone in C++
C++
1
star
23

SentimentRNN

A recurrent network that uses word embeddings to do sentiment analysis in both French and English
Python
1
star
24

go-home

Pun intended
Go
1
star
25

reddit-json-dump-parser

A parser for the reddit data dump
Python
1
star
26

WebcamEyeTracking

Track your eye movements with your webcam
Python
1
star
27

go-link-shortener

A basic link shortening service written in go
Go
1
star