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CPE 542 Pattern Recognition Course Introduction

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Title: CPE 542 Pattern Recognition Course Introduction


1
CPE 542 Pattern Recognition Course Introduction
  • Dr. Gheith Abandah

2
Outline
  • Course Information
  • Textbook and References
  • Course Outline
  • Grading
  • Policies
  • Important Dates

3
Course Information
  • Instructor Dr. Gheith Abandah
  • Email abandah_at_ju.edu.jo
  • Home page http//www.abandah.com/gheith
  • Office Computer Engineering 405
  • Prerequisites 1901473 Operating Systems
  • Office hours
  • Mon 1100 - 1200
  • Tue 1200 - 100
  • Thu 1000 - 1100

4
Textbook and References
  • Theodoridis S, Koutroumbas K (2006) Pattern
    recognition, 3rd edn. Academic Press.
  • References
  • Pattern Classification (2nd ed.) by Richard O.
    Duda, Peter E. Hart and David G. Stork, Wiley
    Interscience, 2001.

5
Course Outline
  • Introduction
  • Bayes Classifiers
  • Linear Classifiers
  • Non Linear Classifiers
  • Midterm Exam
  • Feature Selection
  • Feature Generation
  • Template Matching
  • Context Dependent Classification
  • System Evaluation
  • Clustering Algorithms
  • Final Exam

6
Grading
  • Mid-Term Exam 30
  • Course Project 20
  • To enable the students to get hands-on experience
    in the design, implementation and evaluation of
    pattern recognition algorithms.
  • Teams 2-3 students
  • Solve a practical pattern recognition problem of
    your choice.
  • Use Matlab or a general programming language.
  • Good projects involve using multiple classifiers
    and evaluating their performance in solving the
    problem. And should use preprocessing and feature
    extraction and selection.
  • Final Exam 50

7
Policies
  • Attendance is required.
  • All submitted work must be yours.
  • Cheating will not be tolerated.
  • This course requires significant effort.

8
Important Dates
Mon 8 Feb 2010 First Lecture
Mon 22 Mar 2010 Project Proposal Due
Mon 5 Apr 2010 Midterm Exam
Mon 3 May 2010 Project Report Due
Wed 19 May 2010 Last Lecture
Sun 23 May 2010 Final Exam (1200-200)
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