<!DOCTYPE HTML PUBLIC "-//IETF//DTD HTML 2.0//EN"><!--Converted with LaTeX2HTML 96.1-h (September 30, 1996) by Nikos Drakos (nikos@cbl.leeds.ac.uk), CBLU, University of Leeds -->COURSE TITLE: ECE 332 Digital Image Analysis
CATALOG DESCRIPTION: Introduction to computer and biological vision systems, image formation, edge detection, image segmentation, texture, representation and analysis of two-dimensional geometric structures, and representation and analysis of three-dimensional structures.
REQUIRED TEXTS: R. Jain, R. Kasturi, and B. G. Schunck, Machine Vision, McGraw-Hill, Inc. 1995.
READINGS: Papers from journals, conference proceedings, or book chapters will be assigned.
COURSE COORDINATOR: Ying Wu
COURSE GOALS: The goal of this course is to provide students with a basic understanding of the fundamentals and applications of digital image analysis (or computer vision) techniques including 2-D and 3-D paradigms to solve real world applications.
PREREQUISITES: CS 311
PREREQUISITES BY TOPIC:
1. Linear algebra
2. Probability
3. Computer programming in C
DETAILED COURSE TOPICS:
MACHINE PROBLEMS:
FINAL
PROJECTS:
Based on the machine problems, the course involves a final project to design a vision-based interface system, i.e., a “virtual gun,” where the cursor moves with your fingertips. The idea is to locate and track a fingertip through a video sequence accurately and robustly. The project consists of three parts: (1) a working demo, (2) a 15-minute presentation, and (3) a 15-page report.
GRADES:
Machine problems – 50%
Final project – 50%
COURSE
OBJECTIVES: When a student completes
this course, s/he should be able to:
ABET CONTENT CATEGORY: 100% Engineering (Design component).