Computer Vision with SimpleCV Training Course
SimpleCV is an open-source framework, comprising a suite of libraries and software tools designed to facilitate the development of vision-based applications. It enables you to process images and video streams from diverse sources, including webcams, Kinect sensors, FireWire devices, IP cameras, and mobile phones. This framework empowers you to create software that not only captures the world visually but also interprets and understands it.
Audience
This course is tailored for engineers and developers aiming to build computer vision applications using SimpleCV.
This course is available as onsite live training in Italy or online live training.Course Outline
Getting Started
- Installation
Tutorials & Examples
- SimpleCV Shell
- SimpleCV Basics
- The Hello World program
- Interacting with the Display
- Loading a Directory of Images
- Macros
- Kinect
- Timing
- Detecting a Car
- Segmenting the Image and Morphology
- Image Arithmetic
- Exceptions in Image Math
- Histograms
- Color Space
- Using Hue Peaks
- Creating a Motion Blur Effect
- Simulating Long Exposure
- Chroma Key (Green Screen)
- Drawing on Images in SimpleCV
- Layers
- Marking up the Image
- Text and Fonts
- Making a Custom Display Object
Requirements
Familiarity with the following programming language is required:
- Python
Open Training Courses require 5+ participants.
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Testimonials (2)
Hands on and the practical
Keeren Bala Krishnan - PENGUIN SOLUTIONS (SMART MODULAR)
Course - Computer Vision with Python
I genuinely enjoyed the hands-on approach.
Kevin De Cuyper
Course - Computer Vision with OpenCV
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