This repository for project that can Automate Number Plate Recognition (ANPR) in Morocco Licensed Vehicles. 💻 + 🚙 + 🇲🇦 = 🤖 🕵🏻‍♂️

Overview

MoroccoAI Data Challenge (Edition #001)

This Reposotory is result of our work in the comepetiton organized by MoroccoAI in the context of the first MoroccoAI Data Challenge. For More Information, check the Kaggle Competetion page !

Automatic Number Plate Recognition (ANPR) in Morocco Licensed Vehicles

In Morocco, the number of registered vehicles doubled between 2000 and 2019. In 2019, a few months before lockdowns due to the Coronavirus Pandemic, 8 road fatalities were recorded per 10 000 registered vehicles. This rate is extremely high when compared with other IRTAD countries. The National Road Safety Agency (NARSA) established the road safety strategy 2017-26 with the main target to reduce the number of road deaths by 50% between 2015 and 2026 [1]. Law enforcement, speed limit enforcement and traffic control are one of most efficient measures taken by the authorities to achieve modern road user safety. Automatic Number Plate Recognition (ANPR) is used by the police around the world for law and speed limit enforcement and traffic control purposes, including to check if a vehicle is registered or licensed. It is also used as a method of cataloguing the movements of traffic by highways agencies. ANPR uses optical character recognition (OCR) to read vehicles’ license plates from images. This is very challenging for many reasons including non-standardized license plate formats, complex image acquisition scenes, camera conditions, environmental conditions, indoor/outdoor or day/night shots, etc. This data-challenge addresses the problem of ANPR in Morocco licensed vehicles. Based on a small training dataset of 450 labeled car images, the participants have to provide models able to accurately recognize the plate numbers of Morocco licensed vehicles.

Table of Contents

Dataset

The dataset is 654 jpg pictures of the front or back of vehicles showing the license plate. They are of different sizes and are mostly cars. The plate license follows Moroccan standard.

For each plate corresponds a string (series of numbers and latin characters) labeled manually. The plate strings could contain a series of numbers and latin letters of different length. Because letters in Morocco license plate standard are Arabic letters, we will consider the following transliteration: a <=> أ, b <=> ب, j <=> ج (jamaa), d <=> د , h <=> ه , waw <=> و, w <=> w (newly licensed cars), p <=> ش (police), fx <=> ق س (auxiliary forces), far <=> ق م م (royal army forces), m <=>المغرب, m <=>M. For example:

  • the string “123ب45” have to be converted to “12345b”,
  • the string “123و4567” to “1234567waw”,
  • the string “12و4567” to “1234567waw”,
  • the string “1234567ww” to “1234567ww”, (remain the same)
  • the string “1234567far” to “1234567ق م م”,
  • the string “1234567m” to “1234567المغرب",
  • etc.

We offer the plate strings of 450 images (training set). The remaining 204 unlabeled images will be the test set. The participants are asked to provide the plate strings in the test set.
image

Our Approach

Our approach was to use Object Detection to detect plate characters from images. We have chosen to build two models separately instead of using libraries directly like easyOCR or Tesseract due to its weaknesses in handling the variance in the shapes of Moroccan License plates. The first model was trained to detect the licence plate to be then cropped from the original image, which will be then passed into the second model that was trained to detect the characters.

  • Data acquisition and preparation

    First we start by annotating the dataset on our own using a tool called LabelImg. Then we found that the dataset provided by MSDA Lab was publicly available and fits our approach, as they have prepared the annotation in the following form :

    • A folder that contains the Original image and bounding boxes of plates with 2 format Pascal Voc Format and Yolo Darknet Format.
    • And the other folder , contains only the licence plates and the characters bounding boxes with the same formats.
  • Library and Model Architecture

    We have choose faster-rcnn model for both Object detection tasks, using library called detectron2 based on Pytorch and developed by FaceBook AI Research Laboratory (FAIR). A Faster R-CNN object detection network is composed of a feature extraction network which is typically a pretrained CNN, similar to what we had used for its predecessor. This is then followed by two subnetworks which are trainable. The first is a Region Proposal Network (RPN), which is, as its name suggests, used to generate object proposals and the second is used to predict the actual class of the object. So the primary differentiator for Faster R-CNN is the RPN which is inserted after the last convolutional layer. This is trained to produce region proposals directly without the need for any external mechanism like Selective Search. After this we use ROI pooling and an upstream classifier and bounding box regressor similar to Fast R-CNN.

  • Modeling

Training a first Faster-RCNN model only to detect licence plates.

And a second trained separately only to detect characters on cropped images of the licence plates.

The both models were pretrained on the COCO dataset, because we didn’t have enough data, therefor it would only make sense to take the advantage of transfer learning of models that were trained on such a rich dataset.

  • Post-Processing
    Now we have a good model that can detect the majority of the characters in Licence Plates, the work is not done yet, because our model returns the boxes of detected characters, without taking the order in consideration. So we had to do a post-processing algorithm that can return the licence plate characters in the right order.
    1. Split characters based on median of Y-Min of all detected characters boxes, by taking characters where their Y-Max is smaller than Median-Y-Mins into a string called top-characters, and those who have Y-Max greater than Median-Y-Mins will be in bottom_characters.
    2. Order characters in top and bottom list from left to right based on the X_Min of the detected Box of each character.

Owner
SAFOINE EL KHABICH
SAFOINE EL KHABICH
CTRL-C: Camera calibration TRansformer with Line-Classification

CTRL-C: Camera calibration TRansformer with Line-Classification This repository contains the official code and pretrained models for CTRL-C (Camera ca

57 Nov 14, 2022
以孤立语假设和宽度优先搜索为基础,构建了一种多通道堆叠注意力Transformer结构的斗地主ai

ddz-ai 介绍 斗地主是一种扑克游戏。游戏最少由3个玩家进行,用一副54张牌(连鬼牌),其中一方为地主,其余两家为另一方,双方对战,先出完牌的一方获胜。 ddz-ai以孤立语假设和宽度优先搜索为基础,构建了一种多通道堆叠注意力Transformer结构的系统,使其经过大量训练后,能在实际游戏中获

freefuiiismyname 88 May 15, 2022
Implementation of SwinTransformerV2 in TensorFlow.

SwinTransformerV2-TensorFlow A TensorFlow implementation of SwinTransformerV2 by Microsoft Research Asia, based on their official implementation of Sw

Phan Nguyen 2 May 30, 2022
Code to go with the paper "Decentralized Bayesian Learning with Metropolis-Adjusted Hamiltonian Monte Carlo"

dblmahmc Code to go with the paper "Decentralized Bayesian Learning with Metropolis-Adjusted Hamiltonian Monte Carlo" Requirements: https://github.com

1 Dec 17, 2021
Code for Subgraph Federated Learning with Missing Neighbor Generation (NeurIPS 2021)

To run the code Unzip the package to your local directory; Run 'pip install -r requirements.txt' to download required packages; Open file ~/nips_code/

32 Dec 26, 2022
All of the figures and notebooks for my deep learning book, for free!

"Deep Learning - A Visual Approach" by Andrew Glassner This is the official repo for my book from No Starch Press. Ordering the book My book is called

Andrew Glassner 227 Jan 04, 2023
Code of Periodic Activation Functions Induce Stationarity

Periodic Activation Functions Induce Stationarity This repository is the official implementation of the methods in the publication: L. Meronen, M. Tra

AaltoML 12 Jun 07, 2022
Spatial Contrastive Learning for Few-Shot Classification (SCL)

This repo contains the official implementation of Spatial Contrastive Learning for Few-Shot Classification (SCL), which presents of a novel contrastive learning method applied to few-shot image class

Yassine 34 Dec 25, 2022
Get started with Machine Learning with Python - An introduction with Python programming examples

Machine Learning With Python Get started with Machine Learning with Python An engaging introduction to Machine Learning with Python TL;DR Download all

Learn Python with Rune 130 Jan 02, 2023
Python Fanduel API (2021) - Lineup Automation

Southpaw is a python package that provides access to the Fanduel API. Optimize your DFS experience by programmatically updating your lineups, analyzin

Brandin Canfield 13 Jan 04, 2023
LONG-TERM SERIES FORECASTING WITH QUERYSELECTOR – EFFICIENT MODEL OF SPARSEATTENTION

Query Selector Here you can find code and data loaders for the paper https://arxiv.org/pdf/2107.08687v1.pdf . Query Selector is a novel approach to sp

MORAI 62 Dec 17, 2022
A Tensorflow implementation of the Text Conditioned Auxiliary Classifier Generative Adversarial Network for Generating Images from text descriptions

A Tensorflow implementation of the Text Conditioned Auxiliary Classifier Generative Adversarial Network for Generating Images from text descriptions

Ayushman Dash 93 Aug 04, 2022
On Effective Scheduling of Model-based Reinforcement Learning

On Effective Scheduling of Model-based Reinforcement Learning Code to reproduce the experiments in On Effective Scheduling of Model-based Reinforcemen

laihang 8 Oct 07, 2022
PyTorch implementation for the paper Pseudo Numerical Methods for Diffusion Models on Manifolds

Pseudo Numerical Methods for Diffusion Models on Manifolds (PNDM) This repo is the official PyTorch implementation for the paper Pseudo Numerical Meth

Luping Liu (刘路平) 196 Jan 05, 2023
Named Entity Recognition with Small Strongly Labeled and Large Weakly Labeled Data

Named Entity Recognition with Small Strongly Labeled and Large Weakly Labeled Data arXiv This is the code base for weakly supervised NER. We provide a

Amazon 92 Jan 04, 2023
DPC: Unsupervised Deep Point Correspondence via Cross and Self Construction (3DV 2021)

DPC: Unsupervised Deep Point Correspondence via Cross and Self Construction (3DV 2021) This repo is the implementation of DPC. Tested environment Pyth

Dvir Ginzburg 30 Nov 30, 2022
An image processing project uses Viola-jones technique to detect faces and then use SIFT algorithm for recognition.

Attendance_System An image processing project uses Viola-jones technique to detect faces and then use LPB algorithm for recognition. Face Detection Us

8 Jan 11, 2022
A tool for calculating distortion parameters in coordination complexes.

OctaDist Octahedral distortion calculator: A tool for calculating distortion parameters in coordination complexes. https://octadist.github.io/ Registe

OctaDist 12 Oct 04, 2022
[CVPR21] LightTrack: Finding Lightweight Neural Network for Object Tracking via One-Shot Architecture Search

LightTrack: Finding Lightweight Neural Networks for Object Tracking via One-Shot Architecture Search The official implementation of the paper LightTra

Multimedia Research 290 Dec 24, 2022
The sixth place winning solution (6/220) in 2021 Gaofen Challenge.

SwinTransformer + OBBDet The sixth place winning solution (6/220) in the track of Fine-grained Object Recognition in High-Resolution Optical Images, 2

ming71 46 Dec 02, 2022