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I'm working on an anpr system and to convert the registration plate image to text output. I previously tried to use (py)tessaract to do the ocr for me but this wasn't giving me sufficient results.

As my current training set i'm using this font as all registration fonts are the same

UK number plate font

from my images some of the resultant number plates will be at weird angles so the plate isn't recognised correctly

So I am asking is there a way to make each digit distorted in many different ways and storing that distortion in an nparray in a file and from this can perform machine learning techniques on Something like this (however output to be different) https://archive.ics.uci.edu/ml/datasets/Letter+Recognition

Thanks i used a previous point to help me so far to separate characters and so on Recognize the characters of license plate

Thanks any help would be appreciated

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  • There is no problem distorting a text. Use an homographic transform. (And I don't think it is necessary to store in a file before training.) Another approach is to figure out the distortion, undistort the text and perform ordinary OCR.
    – user1196549
    Feb 8, 2018 at 16:41

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