OpenALPR - Automatic License Plate Recognition library

  •        5408

OpenALPR is an open source Automatic License Plate Recognition library written in C++ with bindings in C#, Java, Node.js, and Python. The library analyzes images and video streams to identify license plates. The output is the text representation of any license plate characters.

https://github.com/openalpr/openalpr

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