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This stands for Automatic Number/License Plate Recognition, ALPR, ANPR, Vehicle Number Plate Recognition, Vehicle Detection and Vehicle Tracking

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Automatic-License-Plate-Recognition

Overview

We implemented ANPR/ALPR(Automatic Number/License Plate Recognition) engine with unmatched accuracy and precision by applying SOTA(State-of-the-art) deep learning techniques in this repository. This repository demonstrates ANPR/ALPR model inference in Linux server.

KBY-AI's LPR solutions utilizes artificial intelligence and machine learning to greatly surpass legacy solutions. Now, in real-time, users can receive a vehicle's plate number.

The ALPR system consists of the following steps:

  • Vehicle image capture
  • Preprocessing
  • Vehicle detection
  • Number plate extraction
  • Charater segmentation
  • Optical Character Recognition(OCR)

The ALPR system works in these strides, the initial step is the location of the vehicle and capturing a vehicle image of front or back perspective of the vehicle, the second step is the localization of Number Plate and then extraction of vehicle Number Plate is an image. The final stride uses image segmentation strategy, for the segmentation a few techniques neural network, mathematical morphology, color analysis and histogram analysis. Segmentation is for individual character recognition. Optical Character Recognition (OCR) is one of the strategies to perceive the every character with the assistance of database stored for separate alphanumeric character.

Online Test Demo

To try KBY-AI ALPR online, please visit here

Model Weights

To run this repository, model weights are needed.

About Repository

1. Set up

  1. Clone this repository to local or server machine.

  2. Install python 3.9 or later version

  3. Install dependencies using pip command

pip install tensorflow
  1. Run inference
python main.py

2. Performance Video

You can visit our YouTube video for ANPR/ALPR model's performance here to see how well our demo app works.

ANPR/ALPR Demo

Application of ALPR

Automatic license-plate recognition (ALPR) is a technology that uses OCR(optical character recognition) on images to read vehicle registration plates. It can use existing closed-circuit television, road-rule enforcement cameras, or cameras specifically designed for the task. ALPR can be used by police forces around the world for law enforcement purposes, including to check if a vehicle is registered or licensed. It is also used for electronic toll collection on pay-per-use roads and as a method of cataloguing the movements of traffic, for example by highways agencies.
ALPR has many uses including:

  • Recovering stolen cars
  • Identifying drivers with an open warrant for arrest
  • Catching speeders by comparing the average time it takes to get from stationary camera A to stationary camera B
  • Determining what cars do and do not belong in a parking garage
  • Expediting parking by eliminating the need for human confirmation of parking passes

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This stands for Automatic Number/License Plate Recognition, ALPR, ANPR, Vehicle Number Plate Recognition, Vehicle Detection and Vehicle Tracking

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