Automating Image Processing
Offered By: MathWorks via Coursera
Course Description
Overview
In this course, you will build on the skills acquired in Image Segmentation, Filtering, and Region Analysis to explore large sets of images and video files. It’s impractical to manually inspect results in large data sets. Automating image processing allows you to do your work more efficiently.
At the end of this course, you’ll apply all the skills learned in this specialization to a final project. You’ll take the role of an engineer being asked to monitor traffic on a busy road. You’ll detect cars from a noisy video and analyze the results.
You will use MATLAB throughout this course. MATLAB is the go-to choice for millions of people working in engineering and science, and provides the capabilities you need to accomplish your image processing tasks. You will be provided with free access to MATLAB for the duration of the course to complete your work.
To be successful in this course you should have a background in basic math and some exposure to MATLAB. If you want to familiarize yourself with MATLAB check out the free, two-hour MATLAB Onramp. Experience with image processing is not required.
Syllabus
- Processing Batches of Images
- Working with Video Files
- Analyzing Results
- Final Project: Detecting Cars in a Noisy Video
Taught by
Amanda Wang, Isaac Bruss, Matt Rich, Megan Thompson, Sam Jones and Brandon Armstrong
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