(5 intermediate revisions by 2 users not shown)
Line 1: Line 1:
 
[[Category:ECE662]]
 
[[Category:ECE662]]
 +
[[Category:pattern recognition]]
 +
[[Category:decision theory]]
  
= [[ECE]] 662: Statistical Pattern Recognition and Decision Making Processes (cross-listed with computer science as CS662)=
+
 
Click [[:Category:ECE662|here]] to view a list of all pages in the [[:Category:ECE662|ECE662 category]].
+
<center><font size= 4>
 +
'''[[ECE662]]: Statistical Pattern Recognition and Decision Making Processes'''
 +
</font size>
 +
 
 +
(cross-listed with computer science as CS662)
 +
 
 +
</center>
 +
 
 +
----
 
----
 
----
 
This course was previously developed and taught by Professor [https://engineering.purdue.edu/ECE/People/profile?resource_id=3088 Keinosuke Fukunaga].
 
This course was previously developed and taught by Professor [https://engineering.purdue.edu/ECE/People/profile?resource_id=3088 Keinosuke Fukunaga].
Line 14: Line 24:
 
Share advice with future students regarding ECE662 on [[Peer_Legacy_ECE662|this page]].   
 
Share advice with future students regarding ECE662 on [[Peer_Legacy_ECE662|this page]].   
  
== Main Course Topics ==
+
== Slectures and Lecture Notes ==
* [[About Pattern Recognition]]
+
*[[ECE662_Pattern_Recognition_Decision_Making_Processes_Spring2008_sLecture_collective|Spring 2008, Prof. Boutin]], notes collectively written by the students in the class.
 +
*[[2014_Spring_ECE_662_Boutin_Statistical_Pattern_recognition_slectures|The Boutin Lectures on Statistical Pattern Recognition]], Multilingual Slectures by Students in the Spring 2014 Class of ECE662
 +
 
 +
== Some Course Topics ==
 
* [[Bayes_Decision_Theory]]
 
* [[Bayes_Decision_Theory]]
* [[Discriminant Functions]]
 
 
* [[Fisher Linear Discriminant]]
 
* [[Fisher Linear Discriminant]]
* [[Bayesian Decision Theory for Normally Distributed Features]]
 
 
* [[Feature Extraction]]
 
* [[Feature Extraction]]
* [[Density Estimation]]
 
* [[Linear classifiers]]
 
 
* [[Artificial Neural Networks]]
 
* [[Artificial Neural Networks]]
 
* [[Support Vector Machines]]
 
* [[Support Vector Machines]]
Line 36: Line 45:
 
*[[ANN_Simulink_examples_ece662_Sp2010|A jump start on using Simulink to develop a ANN-based classifier]]  
 
*[[ANN_Simulink_examples_ece662_Sp2010|A jump start on using Simulink to develop a ANN-based classifier]]  
 
*[[KNN-K_Nearest_Neighbor_OldKiwi|The K Nearest Neighbor Algorithm]]
 
*[[KNN-K_Nearest_Neighbor_OldKiwi|The K Nearest Neighbor Algorithm]]
 +
*[[MLE_Examples:_Binomial_and_Poisson_Distributions_OldKiwi|MLE example: binomial and poisson distributions]]
 +
*[[MLE_Examples:_Exponential_and_Geometric_Distributions_OldKiwi|MLE example: exponential and geometric distributions]]
 
*[[Bayes_Decision_Rule_Old_Kiwi|Video illustrating the decision boundary for normally distributed features]]
 
*[[Bayes_Decision_Rule_Old_Kiwi|Video illustrating the decision boundary for normally distributed features]]
 
::<youtube>wzJkaATyitA</youtube>
 
::<youtube>wzJkaATyitA</youtube>
 
== Semester/Instructor specific pages ==
 
== Semester/Instructor specific pages ==
 +
*[[2016_Spring_ECE_662_Boutin|Spring 2016, Prof. Boutin]]
 +
*[[2014_Spring_ECE_662_Boutin|Spring 2014, Prof. Boutin]]
 
*[[2012_Spring_ECE_662_Boutin|Spring 2012, Prof. Boutin]]
 
*[[2012_Spring_ECE_662_Boutin|Spring 2012, Prof. Boutin]]
 
*[[2010_Spring_ECE_662_mboutin|Spring 2010, Prof. Boutin]]
 
*[[2010_Spring_ECE_662_mboutin|Spring 2010, Prof. Boutin]]

Latest revision as of 08:07, 11 January 2016


ECE662: Statistical Pattern Recognition and Decision Making Processes

(cross-listed with computer science as CS662)



This course was previously developed and taught by Professor Keinosuke Fukunaga.

Since 2006, it is taught by Prof. Boutin every Spring of even years.

Textbooks

"Introduction to Statistical Pattern Recognition" by K. Fukunaga

Peer Legacy

Share advice with future students regarding ECE662 on this page.

Slectures and Lecture Notes

Some Course Topics

Interesting pages in the ECE662 category

Semester/Instructor specific pages

Other References


Back to ECE

Back to Course List

Alumni Liaison

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

Dr. Paul Garrett