Pattern Recognition and Application

Pattern Recognition and Application

nptelhrd via YouTube Direct link

Mod-01 Lec-23 Linear Discriminator (Tutorial)

23 of 40

23 of 40

Mod-01 Lec-23 Linear Discriminator (Tutorial)

Class Central Classrooms beta

YouTube playlists curated by Class Central.

Classroom Contents

Pattern Recognition and Application

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Mod-01 Lec-01 Introduction
  2. 2 Mod-01 Lec-02 Feature Extraction - I
  3. 3 Mod-01 Lec-03 Feature Extraction - II
  4. 4 Mod-01 Lec-04 Feature Extraction - III
  5. 5 Mod-01 Lec-05 Bayes Decision Theory
  6. 6 Mod-01 Lec-06 Bayes Decision Theory (Contd.)
  7. 7 Mod-01 Lec-07 Normal Density and Discriminant Function
  8. 8 Mod-01 Lec-08 Normal Density and Discriminant Function (Contd.)
  9. 9 Mod-01 Lec-09 Bayes Decision Theory - Binary Features
  10. 10 Mod-01 Lec-10 Maximum Likelihood Estimation
  11. 11 Mod-01 Lec-11 Probability Density Estimation
  12. 12 Mod-01 Lec-12 Probability Density Estimation (Contd.)
  13. 13 Mod-01 Lec-13 Probability Density Estimation (Contd. )
  14. 14 Mod-01 Lec-14 Probability Density Estimation ( Contd.)
  15. 15 Mod-01 Lec-15 Probability Density Estimation ( Contd. )
  16. 16 Mod-01 Lec-16 Dimensionality Problem
  17. 17 Mod-01 Lec-17 Multiple Discriminant Analysis
  18. 18 Mod-01 Lec-18 Multiple Discriminant Analysis (Tutorial)
  19. 19 Mod-01 Lec-19 Multiple Discriminant Analysis (Tutorial )
  20. 20 Mod-01 Lec-20 Perceptron Criterion
  21. 21 Mod-01 Lec-21 Perceptron Criterion (Contd.)
  22. 22 Mod-01 Lec-22 MSE Criterion
  23. 23 Mod-01 Lec-23 Linear Discriminator (Tutorial)
  24. 24 Mod-01 Lec-24 Neural Networks for Pattern Recognition
  25. 25 Mod-01 Lec-25 Neural Networks for Pattern Recognition (Contd.)
  26. 26 Mod-01 Lec-26 Neural Networks for Pattern Recognition (Contd. )
  27. 27 Mod-01 Lec-27 RBF Neural Network
  28. 28 Mod-01 Lec-28 RBF Neural Network (Contd.)
  29. 29 Mod-01 Lec-29 Support Vector Machine
  30. 30 Mod-01 Lec-30 Hyperbox Classifier
  31. 31 Mod-01 Lec-31 Hyperbox Classifier (Contd.)
  32. 32 Mod-01 Lec-32 Fuzzy Min Max Neural Network for Pattern Recognition
  33. 33 Mod-01 Lec-33 Reflex Fuzzy Min Max Neural Network
  34. 34 Mod-01 Lec-34 Unsupervised Learning - Clustering
  35. 35 Mod-01 Lec-35 Clustering (Contd.)
  36. 36 Mod-01 Lec-36 Clustering using minimal spanning tree
  37. 37 Mod-01 Lec-37 Temporal Pattern recognition
  38. 38 Mod-01 Lec-38 Hidden Markov Model
  39. 39 Mod-01 Lec-39 Hidden Markov Model (Contd.)
  40. 40 Mod-01 Lec-40 Hidden Markov Model (Contd. )

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.