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Automatic Number Plate Recognition, OCR Web App in Python

Automatic Number Plate Recognition, OCR Web App in Python Learn to Develop License Plate Object Detection, OCR and Create Web App Project using Deep Learning, TensorFlow 2, Flask
Automatic Number Plate Recognition, OCR Web App in Python Learn to Develop License Plate Object Detection, OCR and Create Web App Project using Deep Learning, TensorFlow 2, Flask

Automatic Number Plate Recognition, OCR Web App in Python

Learn to Develop License Plate Object Detection, OCR and Create Web App Project using Deep Learning, TensorFlow 2, Flask

What you’ll learn

Automatic Number Plate Recognition, OCR Web App in Python

  • Object Detection from Scratch
  • License Plate Detection
  • Extract text from Image using Tesseract
  • Train InceptionResnet V2 in TensorFlow 2 for Object Detection
  • Flask Based Web API
  • Labeling Object Detection Data using Image Annotation Tool

Requirements

  • Basic knowledge of Python
  • Knowledge of Deep Learning with TensorFlow
  • Basics on HTML

Description

Welcome to NUMBER PLATE DETECTION AND OCR: A DEEP LEARNING WEB APP PROJECT from scratch

Image Processing and Object Detection is one of the areas of Data Science and has a wide variety of applications in the industries in the current world. Many industries looking for a Data Scientist with these skills. This course covers modeling techniques including labeling Object Detection data (images), data preprocessing, Deep Learning Model building (InceptionResNet V2), evaluation, and production (Web App)

We start this course Project Architecture that was followed to Develop this App in Python. Then I will show how to gather data and label images for object detection for Licence Plate or Number Plate using Image Annotation Tool which is open-source software developed in python GUI (pyQT).

Then after we label the image we will work on data preprocessing, build and train deep learning object detection model (InceptionResnet V2) in TensorFlow 2. Once the model is trained with the best loss, we will evaluate the model. I will show you how to calculate the

  • Intersection Over Union (IoU)
  • The precision of the object detection model.

Once we have done with the Object Detection model, then using this model we will crop the image which contains the license plate which is also called the region of interest (ROI), and pass the ROI to Optical Character Recognition API Tesseract in Python (Pytesseract). In this model, I will show you how to extract text from images.  Now, we will put it all together and build a Pipeline Deep Learning model.

In the final module, we will learn to create a web app project using FLASK Python. Initially, we will learn basics concepts in Flask like URL routing, render the template, template inheritance, etc. Then we will create our website using HTML, Bootstrap. With that, we are finally ready with our App.

WHAT YOU WILL LEARN?

  • Building Project in Python Programming
  • Labeling Image for Object Detection
  • Train Object Detection model (InceptionResNet V2) in TensorFlow 2.x
  • Model Evaluation
  • Optical Character Recognition with Pytesseract
  • Flask API
  • Flask Web App Development in HTML, Boostrap, Python

We know that Computer Vision-Based Web App is one of those topics that always leaves some doubts. Feel free to ask questions in Q & A and we are very happy to answer all your questions.

We also provided all Notebooks, py files in the resources which will useful for reference.

Who this course is for:

  • Anyone who wants to build a deep learning project from scratch
  • A python developer who wants to develop Number Plate OCR Project
  • Anyone who wants to learn end to end Deep Learning Project
  • Who are curious about developing a Web App project in TensorFlow 2
  • Last updated 3/2021

Automatic Number Plate Recognition, OCR Web App in Python

Content From: https://www.udemy.com/course/deep-learning-web-app-project-number-plate-detection-ocr/
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