YoVDO

Image Segmentation, Filtering, and Region Analysis

Offered By: MathWorks via Coursera

Tags

Computer Science Courses MATLAB Courses Image Segmentation Courses Edge Detection Courses

Course Description

Overview

In this course, you will build on the skills learned in Introduction to Image Processing to work through common complications such as noise. You’ll use spatial filters to deal with different types of artifacts. You’ll learn new approaches to segmentation such as edge detection and clustering. You’ll also analyze regions of interest and calculate properties such as size, orientation, and location. By the end of this course, you’ll be able to separate and analyze regions in your own images. You’ll apply your skills to segment an MRI image of a brain to separate different tissues. 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

  • Spatial Filtering and Edge Detection
  • Improving Segmentation
  • Advanced Segmentation Approaches
  • Calculating Region Properties

Taught by

Amanda Wang, Isaac Bruss, Matt Rich, Megan Thompson, Sam Jones and Brandon Armstrong

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