Raspberry Pi + OpenCV for Facial Recognition Training Course
This instructor-led, live training introduces the software, hardware, and step-by-step process needed to build a facial recognition system from scratch. Facial Recognition is also known as Face Recognition.
The hardware used in this lab includes Rasberry Pi, a camera module, servos (optional), etc. Participants are responsible for purchasing these components themselves. The software used includes OpenCV, Linux, Python, etc.
By the end of this training, participants will be able to:
- Install Linux, OpenCV and other software utilities and libraries on a Rasberry Pi.
- Configure OpenCV to capture and detect facial images.
- Understand the various options for packaging a Rasberry Pi system for use in real-world environments.
- Adapt the system for a variety of use cases, including surveillance, identity verification, etc.
Format of the course
- Part lecture, part discussion, exercises and heavy hands-on practice
Note
- Other hardware and software options include: Arduino, OpenFace, Windows, etc. If you wish to use any of these, please contact us to arrange.
Course Outline
To request a customized course outline for this training, please contact us.
Requirements
- Some programming experience
- Experience with the Linux command line
Audience
- Developers
- Hardware/software technicians
- Technical persons in all industries
- Hobbyists
Open Training Courses require 5+ participants.
Raspberry Pi + OpenCV for Facial Recognition Training Course - Booking
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Raspberry Pi + OpenCV for Facial Recognition - Consultancy Enquiry
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Testimonials (3)
Practical examples and wider context given.
James - Mitsubishi Electric R&D Centre Europe BV (MERCE-UK)
Course - IoT Programming with Python
Sean was a dynamic speaker and the hands-on exercises were very interesting and I can see how they will be really applicable.
Temira Koenig - Yeshiva University
Course - Raspberry Pi for Beginners
I genuinely enjoyed the hands-on approach.
Kevin De Cuyper
Course - Computer Vision with OpenCV
Upcoming Courses (Minimal 5 peserta)
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