바로가기

모두를 위한 열린 강좌 KOCW

주메뉴

강의사진
  • 주제분류
    공학 >전기ㆍ전자 >전자공학
  • 강의학기
    2018년 2학기
  • 조회수
    3,459
  •  
강의계획서
강의계획서
This lecture will cover the basic concepts and principles of pattern recognition and introduce its various applications to help student understand what the pattern recognition is and how it can be used for their research.

차시별 강의

PDF VIDEO SWF AUDIO DOC AX
1. 비디오 Lecture 1: Introduction to Pattern Recognition Introduction to Pattern Recognition URL
문서 Lecture 1: Introduction to Pattern Recognition Introduction to Pattern Recognition URL
2. 비디오 Lecture 2: Probability Theory and Probabilistic Decision Theory Basic Probability Theory URL
문서 Lecture 2: Probability Theory and Probabilistic Decision Theory Basic Probability Theory URL
3. 비디오 Lecture 3: Bayesian Decision Theory Bayesian Inference and Decision Theory URL
문서 Lecture 3: Bayesian Decision Theory Bayesian Inference and Decision Theory URL
4. 비디오 Lecture 4: Clustering and K-means Clustering Clustering Vector Quantization (VQ) Pattern Recognition using VQ URL
문서 Lecture 4: Clustering and K-means Clustering Clustering Vector Quantization (VQ) Pattern Recognition using VQ URL
문서 Lecture 4: Clustering and K-means Clustering Clustering Vector Quantization (VQ) Pattern Recognition using VQ URL
5. 비디오 Lecture 5: Normal Random Variable and Its Discriminant Function Designs Normal Distributions URL
문서 Lecture 5: Normal Random Variable and Its Discriminant Function Designs Normal Distributions URL
문서 Lecture 5: Normal Random Variable and Its Discriminant Function Designs Normal Distributions URL
6. 비디오 Lecture 6: Gaussian Mixture Models and Cross Validation Gaussian Mixture Models (GMM) URL
문서 Lecture 6: Gaussian Mixture Models and Cross Validation Gaussian Mixture Models (GMM) URL
문서 Lecture 6: Gaussian Mixture Models and Cross Validation Gaussian Mixture Models (GMM) URL
7. 비디오 Lecture 7: Support Vector Machines Support Vector Machines (SVM) URL
문서 Lecture 7: Support Vector Machines Support Vector Machines (SVM) URL
8. 비디오 Lecture 8: Principal Component Analysis Principal Component Analysis URL
문서 Lecture 8: Principal Component Analysis Principal Component Analysis URL
9. 비디오 Lecture 9: Single-Layer Linear Perceptron and Multi-Layer Perceptron Single-Layer Linear Perceptron and Multi-Layer Perceptron URL
문서 Lecture 9: Single-Layer Linear Perceptron and Multi-Layer Perceptron Single-Layer Linear Perceptron and Multi-Layer Perceptron URL
10. 비디오 Lecture 10: Handwritten Digit(MNIST) Recognition Using Deep Neural Networks 1 Handwritten Digit(MNIST) Recognition Using Deep Neural Networks 1 URL
문서 Lecture 10: Handwritten Digit(MNIST) Recognition Using Deep Neural Networks 1 Handwritten Digit(MNIST) Recognition Using Deep Neural Networks 1 URL
비디오 Lecture 10: Handwritten Digit(MNIST) Recognition Using Deep Neural Networks 2 Handwritten Digit(MNIST) Recognition Using Deep Neural Networks 2 URL
문서 Lecture 10: Handwritten Digit(MNIST) Recognition Using Deep Neural Networks 2 Handwritten Digit(MNIST) Recognition Using Deep Neural Networks 2 URL

연관 자료

loading..

사용자 의견

강의 평가를 위해서는 로그인 해주세요. 로그인팝업

이용방법

  • 문서 자료 이용시 필요한 프로그램 [바로가기]

    ※ 강의별로 교수님의 사정에 따라 전체 차시 중 일부 차시만 공개되는 경우가 있으니 양해 부탁드립니다.

이용조건