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This a clean and easy-to-use implementation of Paddle OCR. Made with ❤️ by Theos AI.

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🤙🏻 Easy Paddle OCR ⚡️

Easy Paddle OCR by Theos AI

This a clean and easy-to-use implementation of Paddle OCR. Made with ❤️ by Theos AI.

Don't forget to subscribe to our YouTube Channel!

Install the package

pip install easy-paddle-ocr

How does it work?

The text recognition is made on a cropped part of a larger image, usually these crops are made with the bounding box output of an Object Detection model. You can learn how to build a license plate recogition model on the following YouTube Tutorial. You can easily train a model to make bounding boxes around any kind of text, not just license plates. After training your own object detection model, you can pass those cropped bounding boxes to Easy Paddle OCR in order to perform text recognition and read the text they contain.

Read the text

On the read.py file we recognize the text of 3 different cropped bounding boxes, each taken from larger images.

broadway.jpeg broadway.jpeg

brooklyn.jpeg brooklyn.jpeg

casino.jpeg casino.jpeg

Let's recognize all of them with the following script.

from easy_paddle_ocr import TextRecognizer
import time
import cv2

text_recognizer = TextRecognizer() # for custom weights do TextRecognizer(weights='folder_path')
images = ['broadway.jpeg', 'brooklyn.jpeg', 'casino.jpeg']

for filename in images:
  image = cv2.imread(filename)
  start = time.time()
  prediction = text_recognizer.read(image)
  print(f'\n[+] image: {filename}')
  print(f'[+] text: {prediction["text"]}')
  print(f'[+] confidence: {int(prediction["confidence"]*100)}%')
  print(f'[+] inference time: {int((time.time() - start)*1000)} milliseconds')

print()

After running the read.py script you should see the following output.

[+] image: broadway.jpeg
[+] text: BROADWAY
[+] confidence: 98%
[+] inference time: 39 milliseconds

[+] image: brooklyn.jpeg
[+] text: BROOKLYN
[+] confidence: 96%
[+] inference time: 31 milliseconds

[+] image: casino.jpeg
[+] text: CASINO
[+] confidence: 78%
[+] inference time: 30 milliseconds

Custom Training

If you find that the default Paddle OCR weights don't work very well for your specific use case, we recommed you to train your own OCR model on Theos AI.

A tutorial on how to do this is coming soon, but if you already signed up and figured out how to build your own dataset on Theos and trained it on Paddle OCR, the only thing you have to do now is download your custom weights from your training session experiment by clicking the weights button on the top right corner.

Button

Weights

Download the Last or Best weights and extract the zip file. Only the following files are required.

dictionary.txt
inference.pdiparams
inference.pdiparams.info
inference.pdmodel

Finally, set the new weights folder path when you instantiate your TextRecognizer.

text_recognizer = TextRecognizer(weights='./best')

Contact us

Reach out to contact@theos.ai if you have any questions!

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