Show HN: Pytorch Text Recognition Tool(github.com)
github.com
Show HN: Pytorch Text Recognition Tool
https://github.com/s3nh/pytorch-text-recognition
8 comments
In the example, text is not sorted by it's corrdinates but by appearence of boxes in first network. It is visible in more complex documents, that crnn network did not create boxes in descending order (word-by-word).
also, good point about the list. dictionary keys has no logical usage in this one.
also, good point about the list. dictionary keys has no logical usage in this one.
This is awesome, definitely a ton of use cases for this. It would be interesting if you put some background into why you made this project in your README. Some inspiration always helps.
Also some examples of where else you've seen it applied could spark peoples imagination to help people get some more usage out of your work.
Also some examples of where else you've seen it applied could spark peoples imagination to help people get some more usage out of your work.
Hi, thanks for feedback! I'll add more general information. In my opinion theres a lot to do in complex document classification, I'll try to add some demo to make things more intuitive. thanks!
How to train this model in other languages?
the hardest part in training model in foreign languages is to get correctly labeled dataset. I worked with pretrain model on Polish language documents and based on this experience it is relatively good if you are using some text similarity measures. There are some examples/pretrain models with Korean/English/French language
And CRAFT stands for what?
The topic list gives the answer https://github.com/topics/craft
Fist repo: Character Region Awareness for Text Detection (CRAFT)
https://github.com/clovaai/CRAFT-pytorch
Which has a nice video demo.
https://youtu.be/HI8MzpY8KMI
Fist repo: Character Region Awareness for Text Detection (CRAFT)
https://github.com/clovaai/CRAFT-pytorch
Which has a nice video demo.
https://youtu.be/HI8MzpY8KMI
Also, if I were a developer trying to use this, I'd be constantly annoyed at receiving a dict with keys like "0", "1", "2" rather than just getting a list.