Tutorialspoint

April Learning Carnival is here, Use code FEST10 for an extra 10% off

Computer Vision: Face Recognition Quick Starter in Python

person icon Abhilash Nelson

4.6

Computer Vision: Face Recognition Quick Starter in Python

Face Detection from Images, Face Detection from Realtime Videos, Emotion Detection, Age-Gender Prediction, Face Recognition from Images, Face Recognition from Realtime Videos, Face Distance, Face Landmarks Manipulation, Face Makeup. . Also includes a Python basics refresher session.

updated on icon Updated on Apr, 2024

language icon Language - English

person icon Abhilash Nelson

category icon Development,Data Science,Face Recognition

Lectures -44

Resources -2

Duration -4 hours

4.6

price-loader

30-days Money-Back Guarantee

Training 5 or more people ?

Get your team access to 10000+ top Tutorials Point courses anytime, anywhere.

Course Description

Hi There!

welcome to my new course 'Face Recognition with Deep Learning using Python'. This is the second course from my Computer Vision series.

Face Detection and Face Recognition is the most used applications of Computer Vision. Using these techniques, the computer will be able to extract one or more faces in an image or video and then compare it with the existing data to identify the people in that image.

Face Detection and Face Recognition is widely used by governments and organizations for surveillance and policing. We are also making use of it daily in many applications like face unlocking of cell phones etc.

This course will be a quick starter for people who wants to dive deep into face recognition using Python without having to deal with all the complexities and mathematics associated with typical Deep Learning process. 

We will be using a python library called face-recognition which uses simple classes and methods to get the face recognition implemented with ease. We are also using OpenCV, Dlib and Pillow for python as supporting libraries. 

Let's now see the list of interesting topics that are included in this course. 

At first we will have an introductory theory session about Face Detection and Face Recognition technology. 

After that, we are ready to proceed with preparing our computer for python coding by downloading and installing the anaconda package. Then we will install the rest of dependencies and libraries that we require including the dlib, face-recognition, opencv etc and will try a small program to see if everything is installed fine.

Most of you may not be coming from a python based programming background. The next few sessions and examples will help you get the basic python programming skill to proceed with the sessions included in this course. The topics include Python assignment, flow-control, functions and data structures. 

Then we will have an introduction to the basics and working of face detectors which will detect human faces from a given media. We will try the python code to detect the faces from a given image and will extract the faces as separate images.

Then we will go ahead with face detection from a video. We will be streaming the real-time live video from the computer's webcam and will try to detect faces from it. We will draw rectangle around each face detected in the live video.

In the next session, we will customize the face detection program to blur the detected faces dynamically from the webcam video stream.

After that we will try facial expression recognition using pre-trained deep learning model and will identify the facial emotions from the real-time webcam video as well as static images

And then we will try Age and Gender Prediction using pre-trained deep learning model and will identify the  Age and Gender from the real-time webcam video as well as static images

After face detection, we will have an introduction to the basics and working of face recognition which will identify the faces already detected. 

In the next session, We will try the python code to identify the names of people and their the faces from a given image and will draw a rectangle around the face with their names on it.

Then, like as we did in face detection we will go ahead with face recognition from a video. We will be streaming the real-time live video from the computer's webcam and will try to identify and name the faces in it. We will draw rectangle around each face detected and beneath that their names in the live video.

Most times during coding, along with the face matching decision, we may need to know how much matching the face is. For that we will get a parameter called face distance which is the magnitude of matching of two faces. We will later convert this face distance value to face matching percentage using simple mathematics.

In the coming two sessions, we will learn how to tweak the face landmark points used for face detection. We will draw line joining these face land mark points so that we can visualize the points in the face which the computer is used for evaluation. 

Taking the landmark points customization to the next level, we will use the landmark points to create a custom face make-up for the face image.

That's all about the topics which are currently included in this quick course. The code, images and libraries used in this course has been uploaded and shared in a folder. I will include the link to download them in the last session or the resource section of this course. You are free to use the code in your projects with no questions asked.

Also after completing this course, you will be provided with a course completion certificate which will add value to your portfolio.

So that's all for now, see you soon in the class room. Happy learning and have a great time.

Goals

What will you learn in this course:

  • Face Detection from Images, Face Detection from Realtime Videos, Face Recognition from Images, Face Recognition from Realtime Videos, Face Distance, Face Landmarks Manipulation, Face Makeup. . Also includes a Python basics refresher session.

Prerequisites

What are the prerequisites for this course?

  • A decent configuration computer and an enthusiasm to dive into the world of computer vision based Face Recognition
Computer Vision: Face Recognition Quick Starter in Python

Curriculum

Check out the detailed breakdown of what’s inside the course

Course Introduction and Table of Contents
1 Lectures
  • play icon Course Introduction and Table of Contents 06:53 06:53
Introduction to Face Recognition
1 Lectures
Tutorialspoint
Environment Setup: Installing Anaconda Package
2 Lectures
Tutorialspoint
Python Basics (Optional)
4 Lectures
Tutorialspoint
Setting up Environment - Additional Dependencies
2 Lectures
Tutorialspoint
(Optional) DLib Error : Downgrading Python and Fixing
1 Lectures
Tutorialspoint
Introduction to Face Detectors
1 Lectures
Tutorialspoint
Face Detection Implementation
3 Lectures
Tutorialspoint
Realtime face detection from WebCam
2 Lectures
Tutorialspoint
Video Face Detection
1 Lectures
Tutorialspoint
Realtime face detection - Face Blurring
1 Lectures
Tutorialspoint
Real-time Facial Expression Detection - Installing Libraries
1 Lectures
Tutorialspoint
Real-time Facial Expression Detection - Implementation
3 Lectures
Tutorialspoint
Image Facial Expression Detection
1 Lectures
Tutorialspoint
Video Facial Expression Detection
1 Lectures
Tutorialspoint
Real-time Age and Gender Detection Introduction
1 Lectures
Tutorialspoint
Real-time Age and Gender Detection Implementation
1 Lectures
Tutorialspoint
Image Age and Gender Detection Implementation
1 Lectures
Tutorialspoint
Introduction to Face Recognition
1 Lectures
Tutorialspoint
Face Recognition Implementation
2 Lectures
Tutorialspoint
Realtime Face Recognition
2 Lectures
Tutorialspoint
Video Face Recognition
1 Lectures
Tutorialspoint
Face Distance
2 Lectures
Tutorialspoint
Face Landmarks Visualization
2 Lectures
Tutorialspoint
Multi Face Landmarks
1 Lectures
Tutorialspoint
Multi Face Landmarks from Real-time and Pre-saved Video
1 Lectures
Tutorialspoint
Face Makeup Using Face Landmarks
1 Lectures
Tutorialspoint
Real-time Face Makeup
1 Lectures
Tutorialspoint
SOURCE CODE AND FILES ATTACHED
1 Lectures
Tutorialspoint

Instructor Details

Abhilash Nelson

Abhilash Nelson

e


Course Certificate

Use your certificate to make a career change or to advance in your current career.

sample Tutorialspoint certificate

Our students work
with the Best

Related Video Courses

View More

Annual Membership

Become a valued member of Tutorials Point and enjoy unlimited access to our vast library of top-rated Video Courses

Subscribe now
Annual Membership

Online Certifications

Master prominent technologies at full length and become a valued certified professional.

Explore Now
Online Certifications

Talk to us

1800-202-0515