text-detection

Text detection with mainly MSER and SWT

Github stars Tracking Chart

text-detection

This project aims to detect text regions in images using only image processing techniques with MSER (Maximally Stable Extremal Regions) and SWT (Stroke Width Transform). And also Tesseract-OCR
tool is used optionally, as assistance to the algorithm.

Please cite original paper:

Özgen, A.C., Fasounaki, M. and Ekenel, H.K., 2018, May. Text detection in natural and computer-generated images. In 2018 26th Signal Processing and Communications Applications Conference (SIU) (pp. 1-4). IEEE.

INSTALLING

Insall requirements.txt file

pip install -r requirements.txt

Or you can create conda environment with

conda env create -f requirements.yml

For OCR assistance, install Tesseract from package manager

sudo apt install tesseract-ocr

USAGE

Basic usage is

python text_detect.py -i <input-image>

You can give output path

python text_detect.py -i images/scenetext01.jpg -o <output-image>

More options available

python text_detect.py -i images/scenetext01.jpg -o <output-file> -d <light,dark,both,both+> -t

Option -i is image path, -o is output path, -d is SWT direction (default is both+), -t option chooses if Tesseract will be used. Normally Tesseract runs poorly if whole image given as input.
But I use it for final decision of bounding boxes and it is not required all the time.

If you want to give whole image to Tesseract to see the impact of the algorithm, try this.

python text_detection.py -i images/scenetext01.jpg -f

For more detail (seeing intermediate steps), the usage given below is also available.

python text_detection_detail.py -i images/scenetext01.jpg -d both+ -t

Sample Results

sample1

sample2

sample3

sample4

REFERENCES

B. Epshtein, E. Ofek, and Y. Wexler. Detecting text in
natural scenes with stroke width transform. In 2010 IEEE
Computer Society Conference on Computer Vision and
Pattern Recognition, pages 2963–2970, June 2010.

Á. González, L. M. Bergasa, J. J. Yebes, and S. Bronte.
Text location in complex images. In Proceedings of the 21st
International Conference on Pattern Recognition
(ICPR2012), pages 617–620, Nov 2012.

Y. Li and H. Lu. Scene text detection via stroke width.
In Proceedings of the 21st International Conference on
Pattern Recognition (ICPR2012), pages 681–684, Nov
2012.

Main metrics

Overview
Name With Ownerazmiozgen/text-detection
Primary LanguagePython
Program languagePython (Language Count: 1)
Platform
License:GNU General Public License v3.0
所有者活动
Created At2018-01-23 17:20:00
Pushed At2024-11-12 20:26:00
Last Commit At2024-11-12 23:25:47
Release Count0
用户参与
Stargazers Count199
Watchers Count15
Fork Count59
Commits Count27
Has Issues Enabled
Issues Count9
Issue Open Count0
Pull Requests Count3
Pull Requests Open Count0
Pull Requests Close Count0
项目设置
Has Wiki Enabled
Is Archived
Is Fork
Is Locked
Is Mirror
Is Private