Skip to content
Any One Study
  • HOME
  • FAQ
  • ABOUTExpand
    • About Company
    • Vision and Mission
    • Our Team
    • Privacy Policy
    • Terms of Use
  • CONTACT
  • SMART HEALTHExpand
    • Online Health Assistance from Indian Doctors and Specialist . Live Video Consultation
  • BUY NOW
  • LOGIN
  • Register
Live Assistance
Any One Study
  • Home
  • Courses
  • Engineering

Computer Science – Pattern Recognition

Curriculum

  • 1 Section
  • 42 Lessons
  • 10 Weeks
Expand all sectionsCollapse all sections
  • Computer Science - Pattern Recognition
    42
    • 2.1
      Mod-01 Lec-01 Principles of Pattern Recognition I (Introduction and Uses)
    • 2.2
      Mod-01 Lec-02 Principles of Pattern Recognition II (Mathematics)
    • 2.3
      Mod-01 Lec-03 Principles of Pattern Recognition III (Classification and Bayes Decision Rule)
    • 2.4
      Mod-01 Lec-04 Clustering vs. Classification
    • 2.5
      Mod-01 Lec-05 Relevant Basics of Linear Algebra, Vector Spaces
    • 2.6
      Mod-01 Lec-06 Eigen Value and Eigen Vectors
    • 2.7
      Mod-01 Lec-07 Vector Spaces
    • 2.8
      Mod-01 Lec-08 Rank of Matrix and SVD
    • 2.9
      Mod-02 Lec-09 Types of Errors
    • 2.10
      Mod-02 Lec-10 Examples of Bayes Decision Rule
    • 2.11
      Mod-02 Lec-11 Normal Distribution and Parameter Estimation
    • 2.12
      Mod-02 Lec-12 Training Set, Test Set
    • 2.13
      Mod-02 Lec-13 Standardization, Normalization, Clustering and Metric Space
    • 2.14
      Mod-02 Lec-14 Normal Distribution and Decision Boundaries I
    • 2.15
      Mod-02 Lec-15 Normal Distribution and Decision Boundaries II
    • 2.16
      Mod-02 Lec-16 Bayes Theorem
    • 2.17
      Mod-02 Lec-17 Linear Discriminant Function and Perceptron
    • 2.18
      Mod-02 Lec-18 Perceptron Learning and Decision Boundaries
    • 2.19
      Mod-02 Lec-19 Linear and Non-Linear Decision Boundaries
    • 2.20
      Mod-02 Lec-20 K-NN Classifier
    • 2.21
      Mod-02 Lec-21 Principal Component Analysis (PCA)
    • 2.22
      Mod-02 Lec-22 Fisher’s LDA
    • 2.23
      Mod-02 Lec-23 Gaussian Mixture Model (GMM)
    • 2.24
      Mod-02 Lec-24 Assignments
    • 2.25
      Mod-03 Lec-25 Basics of Clustering, Similarity/Dissimilarity Measures, Clustering Criteria.
    • 2.26
      Mod-03 Lec-26 K-Means Algorithm and Hierarchical Clustering..
    • 2.27
      Mod-03 Lec-27 K-Medoids and DBSCAN
    • 2.28
      Mod-04 Lec-28 Feature Selection : Problem statement and Uses
    • 2.29
      Mod-04 Lec-29 Feature Selection : Branch and Bound Algorithm
    • 2.30
      Mod-04 Lec-30 Feature Selection : Sequential Forward and Backward Selection
    • 2.31
      Mod-04 Lec-31 Cauchy Schwartz Inequality
    • 2.32
      Mod-04 Lec-32 Feature Selection Criteria Function: Probabilistic Separability Based
    • 2.33
      Mod-04 Lec-33 Feature Selection Criteria Function: Interclass Distance Based
    • 2.34
      Mod-05 Lec-34 Principal Components
    • 2.35
      Mod-06 Lec-35 Comparison Between Performance of Classifiers
    • 2.36
      Mod-06 Lec-36 Basics of Statistics, Covariance, and their Properties
    • 2.37
      Mod-06 Lec-37 Data Condensation, Feature Clustering, Data Visualization
    • 2.38
      Mod-06 Lec-38 Probability Density Estimation
    • 2.39
      Mod-06 Lec-39 Visualization and Aggregation
    • 2.40
      Mod-06 Lec-40 Support Vector Machine (SVM)
    • 2.41
      Mod-06 Lec-41 FCM and Soft-Computing Techniques
    • 2.42
      Mod-06 Lec-43 Examples of Real-Life Dataset
This content is protected, please login and enroll in the course to view this content!
Mod-03 Lec-25 Basics of Clustering, Similarity/Dissimilarity Measures, Clustering Criteria.
Prev
Mod-03 Lec-27 K-Medoids and DBSCAN
Next

© 2026 Any One Study 

  • HOME
  • FAQ
  • ABOUT
  • CONTACT
  • SMART HEALTH
  • BUY NOW
  • LOGIN
  • Register
Facebook Twitter Instagram YouTube
  • HOME
  • FAQ
  • ABOUT
    • About Company
    • Vision and Mission
    • Our Team
    • Privacy Policy
    • Terms of Use
  • CONTACT
  • SMART HEALTH
    • Online Health Assistance from Indian Doctors and Specialist . Live Video Consultation
  • BUY NOW
  • LOGIN
  • Register