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[[Category:2010_Spring_ECE_662_mboutin]]
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= Course Outline, [[ECE662]] Spring 2010 Prof.  =
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= Course Outline, [[ECE662]] Spring 2010 [[User:Mboutin|Prof. Mimi]] =
Note: This is an approximate outline that is subject to change throughout the semester.
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Note: This is an approximate outline that is subject to change throughout the semester.
  
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<br>
  
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{| width="55%" cellspacing="1" cellpadding="1" border="1"
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|-
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! scope="col" | Lecture
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! scope="col" | Topic
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|-
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| [[Lecture1ECE662S10|1]]
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| 1. Introduction
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|-
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| [[Lecture1ECE662S10|1]]
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| 2. What is pattern Recognition
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|-
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| [[Lecture2ECE662S10|2]],[[Lecture3ECE662S10|3]]
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| 3. Finite vs Infinite feature spaces
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|-
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| [[Lecture4ECE662S10|4]],[[Lecture5ECE662S10|5]]
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| 4. Bayes Rule
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|-
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| [[Lecture6ECE662S10|6]]-10
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|
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5. Discriminant functions
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*Definition;
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*Application to normally distributed features;
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*Error analysis.
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|-
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| [[Lecture11ECE662S10|11]],12,13
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|
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6. Parametric Density Estimation
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*Maximum likelihood estimation
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*Bayesian parameter estimation
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|-
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| 13-19
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|
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7. Non-parametric Density Estimation
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*Parzen Windows
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*K-nearest neighbors
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*The nearest neighbor classification rule.
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|-
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| 19,20,[[Lecture21ECE662S10|21]], [[Lecture22ECE662S10|22]]
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| 8. Linear Discriminants
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|-
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| [[Lecture22ECE662S10|22]], [[Lecture23ECE662S10|23]] ,[[Lecture24ECE662S10|24]],[[Lecture25ECE662S10|25]],[[Lecture26ECE662S10|26]]
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|
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9. Non-Linear Discriminant functions
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*Support Vector Machines&nbsp;
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*Artificial Neural Networks
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|-
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| 27,28,29,30
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| 10. Clustering and decision trees
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|}
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  [[2010 Spring ECE 662 mboutin|Back to 2010 Spring ECE 662 mboutin]]
 
  [[2010 Spring ECE 662 mboutin|Back to 2010 Spring ECE 662 mboutin]]
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[[Category:2010_Spring_ECE_662_mboutin]]

Latest revision as of 08:55, 22 April 2010


Course Outline, ECE662 Spring 2010 Prof. Mimi

Note: This is an approximate outline that is subject to change throughout the semester.


Lecture Topic
1 1. Introduction
1 2. What is pattern Recognition
2,3 3. Finite vs Infinite feature spaces
4,5 4. Bayes Rule
6-10

5. Discriminant functions

  • Definition;
  • Application to normally distributed features;
  • Error analysis.
11,12,13

6. Parametric Density Estimation

  • Maximum likelihood estimation
  • Bayesian parameter estimation
13-19

7. Non-parametric Density Estimation

  • Parzen Windows
  • K-nearest neighbors
  • The nearest neighbor classification rule.
19,20,21, 22 8. Linear Discriminants
22, 23 ,24,25,26

9. Non-Linear Discriminant functions

  • Support Vector Machines 
  • Artificial Neural Networks
27,28,29,30 10. Clustering and decision trees



Back to 2010 Spring ECE 662 mboutin

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Basic linear algebra uncovers and clarifies very important geometry and algebra.

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