Computer Vision on Raspberry Pi Beginner to Advanced
- Development
- Dec 05, 2024

Computer Vision on Raspberry Pi – Beginner to Advanced, available at $129.99, has an average rating of 3.7, with 58 lectures, 10 quizzes, based on 638 reviews, and has 5100 subscribers.
You will learn about What is Raspberry Pi? and what are its components? Understand peripherals that need to be connected to Raspberry Pi Wire up your Raspberry Pi to create a fully functional computer Easily learn preparing SD Card to load Operating System for Raspberry Pi Install packages needed to build Computer Vision applications Learn basic programming aspects of Python Create simple Image Processing applications using Python and OpenCV Build real-world Image Processing applications on Raspberry Pi 4/3/2/Zero Learn basics of Neural Network using Google Colab This course is ideal for individuals who are Anyone who wants to explore Raspberry Pi and interested in building Computer Vision applications or Learn basics of Neural Network using Google Colab It is particularly useful for Anyone who wants to explore Raspberry Pi and interested in building Computer Vision applications or Learn basics of Neural Network using Google Colab.
Enroll now: Computer Vision on Raspberry Pi – Beginner to Advanced
Summary
Title: Computer Vision on Raspberry Pi – Beginner to Advanced
Price: $129.99
Average Rating: 3.7
Number of Lectures: 58
Number of Quizzes: 10
Number of Published Lectures: 58
Number of Published Quizzes: 10
Number of Curriculum Items: 69
Number of Published Curriculum Objects: 69
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
Who Should Attend
Target Audiences
Computer Vision Applications on Raspberry Piis a beginner course on the newly launched Raspberry Pi 4 and is fully compatible with Raspberry Pi 3/2 and Raspberry Pi Zero.
The course is ideal for those new to the Raspberry Pi and who want to explore more about it.
You will learn the components of Raspberry Pi, connecting components to Raspberry Pi, installation of the NOOBS operating system, basic Linux commands, Python programming and building Image Processing applications on Raspberry Pi and the basics of neural networks.
This course will take beginners without coding skills to a level where they can write their own programs.
The basics of Python programming language are well covered in the course.
Building Computer Vision applications are taught in the simplest manner, which is easy to understand.
Users can quickly learn hardware assembly and coding in Python programming for building Computer Vision applications. By the end of this course, users will have enough knowledge about Raspberry Pi, its components, basic Python programming, and execution of Image Processing applications in real-time scenarios.
The course is taught by an expert team of engineers having PhD and Postdoctoral research experience in Computer Vision and Deep Learning.
Anyone can take this course. No engineering knowledge is expected. The tutor has explained all required engineering concepts in the simplest manner.
The course will enable you to independently build Computer Vision applications using Raspberry Pi.
This course is the easiest way to learn and become familiar with the Raspberry Pi platform.
By the end of this course, users will build Image Processing applications which include scaling and flipping images, varying the brightness of images, performing bit-wise operations on images, blurring and sharpening images, thresholding, erosion and dilation, edge detection, and image segmentation. User will also be able to build real-world Image Processing applications, which includes real-time human face eyes nose detection, detecting cars in the video, real-time object detection, human face recognition, convolutional neural network and many more.
The course provides complete code for all Image Processing applications compatible with Raspberry Pi 3/2/Zero.
Course Curriculum
Chapter 1: Introduction
Lecture 1: Components on Raspberry Pi 3
Lecture 2: Components to be connected to Raspberry Pi
Lecture 3: Downloading Software to Format SD Card
Lecture 4: Formatting SD Card
Chapter 2: Setting up Raspberry Pi
Lecture 1: Downloading NOOBS Operating System
Lecture 2: Copying NOOBS Operating System to SD Card
Lecture 3: Flashing NOOBS Operating System to SD Card
Lecture 4: Installing Packages
Lecture 5: Download Course Codes and Images
Chapter 3: Python Basics
Lecture 1: Print
Lecture 2: If Condition
Lecture 3: Making Decisions
Lecture 4: For loop
Lecture 5: While loop
Lecture 6: Functions
Lecture 7: Dictionaries
Lecture 8: Objects
Lecture 9: Class
Lecture 10: Modules
Chapter 4: Computer Vision Applications
Lecture 1: Load Display Save Images
Lecture 2: Scaling
Lecture 3: Flipping
Lecture 4: Varying Brightness
Lecture 5: Bitwise Operations
Lecture 6: Blurring and Sharpening
Lecture 7: Thresholding
Lecture 8: Erosion and Dilation
Lecture 9: Edge Detection
Lecture 10: Image Segmentation
Chapter 5: Real-world Computer Vision Applications
Lecture 1: Real-time Human Face Eyes Nose Detection
Lecture 2: Detecting Cars in Video
Lecture 3: Pedestrian Detection
Lecture 4: Real-time Object Detection
Lecture 5: Human Face Recognition -1
Lecture 6: Human Face Recognition – 2
Chapter 6: Basics of Neural Network on Google Colab
Lecture 1: Introduction to Neural Networks
Lecture 2: Activation Functions
Lecture 3: Neural Networks in Action
Lecture 4: Neural Network Optimization
Lecture 5: Simple Neural Networks
Lecture 6: Multiple Inputs Neural Networks
Lecture 7: Gradient Descent
Lecture 8: Convolutional Neural Networks Operation
Lecture 9: Working of CNNs
Lecture 10: Deep CNN
Lecture 11: CNN on MNIST
Chapter 7: Hands-on Image Processing Assignments
Chapter 8: FREE Learning Resources on Artificial Intelligence
Lecture 1: Deep Learning Resources
Lecture 2: Generative Adversarial Networks Resources
Lecture 3: Deep Reinforcement Learning Resources
Lecture 4: Machine Learning Resources
Lecture 5: Data Science Resources
Lecture 6: TensorFlow Lite Resources
Lecture 7: Movidius Neural Compute Stick Resources
Lecture 8: Quantum Machine Learning Resources
Lecture 9: Artificial Intelligence Resources
Lecture 10: Math for Machine Learning Resources
Lecture 11: Math for Deep Learning Resources
Lecture 12: Theory and Coding Deep Learning Textbooks
Instructors

Dr. Steven Fernandes
Machine Learning, Computer Vision, Data Scientist

Ramesh Nayak
Professor in Information Science & Engineering
Rating Distribution
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
- Random Picks
- Popular
- Hot Reviews
- Build a Lucrative Copywriting Portfolio With Ease
- Life Insurance Annuity Ultimate Buyer’s Guide
- Personal Finance
- The Beginner Forex Trading Playbook
- Dibuja y Esculpe tu COVID para Impresión 3d en Blender 2.8X
- Canva Next Level- Become a Canva Expert
- Hydrogen Energy Masterclass- Fundamentals Applications
- Surpassing Your Kickstarter Goals
- 1YouTube Masterclass The Best Guide to YouTube Success
- 2Python for Absolute Beginners
- 3ZB Trading Cryptocurrency Price Action Course
- 4Photoshop CC- Adjustement Layers, Blending Modes Masks
- 5NGRX angular nativescript
- 6Marketing Mix Modeling in one day for your Brand Analytics_1
- 7AS1 Tosca Practice for Interviews and new learners
- 8Advanced Photoshop Manipulations Tutorials Bundle
- 1Linux Performance Monitoring Analysis Hands On !!
- 2Content Writing Mastery 1- Content Writing For Beginners
- 3Media Training for PrintOnline Interviews-Get Great Quotes
- 4Learn Facebook Ads from Scratch Get more Leads and Sales
- 5The Complete Digital Marketing Course Learn From Scratch
- 6C#- Start programming with C# (for complete beginners)
- 7[FREE] How to code 10 times faster with Emmet
- 8Driving Results through Data Storytelling