Optical character recognition for Japanese text, with the main focus being Japanese manga

Overview

Manga OCR

Optical character recognition for Japanese text, with the main focus being Japanese manga. It uses a custom end-to-end model built with Transformers' Vision Encoder Decoder framework.

Manga OCR can be used as a general purpose printed Japanese OCR, but its main goal was to provide a high quality text recognition, robust against various scenarios specific to manga:

  • both vertical and horizontal text
  • text with furigana
  • text overlaid on images
  • wide variety of fonts and font styles
  • low quality images

Unlike many OCR models, Manga OCR supports recognizing multi-line text in a single forward pass, so that text bubbles found in manga can be processed at once, without splitting them into lines.

Code for training and synthetic data generation will be released soon.

Installation

You need Python 3.6, 3.7, 3.8 or 3.9. Unfortunately, PyTorch does not support Python 3.10 yet.

If you want to run with GPU, install PyTorch as described here, otherwise this step can be skipped.

Run in command line:

pip3 install manga-ocr

Usage

Python API

from manga_ocr import MangaOcr

mocr = MangaOcr()
text = mocr('/path/to/img')

or

import PIL.Image

from manga_ocr import MangaOcr

mocr = MangaOcr()
img = PIL.Image.open('/path/to/img')
text = mocr(img)

Running in the background

Manga OCR can run in the background and process new images as they appear.

You might use a tool like ShareX to manually capture a region of the screen and let the OCR read it either from the system clipboard, or a specified directory. By default, Manga OCR will write recognized text to clipboard, from which it can be read by a dictionary like Yomichan. Reading images from clipboard works only on Windows and macOS, on Linux you should read from a directory instead.

Your full setup for reading manga in Japanese with a dictionary might look like this:

capture region with ShareX -> write image to clipboard -> Manga OCR -> write text to clipboard -> Yomichan

manga_ocr_demo.mp4
  • To read images from clipboard and write recognized texts to clipboard, run in command line:
    manga_ocr
    
  • To read images from ShareX's screenshot folder, run in command line:
    manga_ocr "/path/to/sharex/screenshot/folder"
    

When running for the first time, downloading the model (~400 MB) might take a few minutes. The OCR is ready to use after OCR ready message appears in the logs.

  • To see other options, run in command line:
    manga_ocr --help
    

If manga_ocr doesn't work, you might also try replacing it with python -m manga_ocr.

Usage tips

  • OCR supports multi-line text, but the longer the text, the more likely some errors are to occur. If the recognition failed for some part of a longer text, you might try to run it on a smaller portion of the image.
  • The model was trained specifically to handle manga well, but should do a decent job on other types of printed text, such as novels or video games. It probably won't be able to handle handwritten text though.
  • The model always attempts to recognize some text on the image, even if there is none. Because it uses a transformer decoder (and therefore has some understanding of the Japanese language), it might even "dream up" some realistically looking sentences! This shouldn't be a problem for most use cases, but it might get improved in the next version.

Examples

Here are some cherry-picked examples showing the capability of the model.

image Manga OCR result
素直にあやまるしか
立川で見た〝穴〟の下の巨大な眼は:
実戦剣術も一流です
第30話重苦しい闇の奥で静かに呼吸づきながら
よかったじゃないわよ!何逃げてるのよ!!早くあいつを退治してよ!
ぎゃっ
ピンポーーン
LINK!私達7人の力でガノンの塔の結界をやぶります
ファイアパンチ
少し黙っている
わかるかな〜?
警察にも先生にも町中の人達に!!

Acknowledgments

This project was done with the usage of Manga109-s dataset.

Owner
Maciej Budyś
Maciej Budyś
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