Face Recognition - PowerPoint PPT Presentation

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Face Recognition

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Euclidean distance between images. Principal component analysis (PCA) ... Step 1: find approximate face position. Step 2: refine position and size ... – PowerPoint PPT presentation

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Title: Face Recognition


1
Face Recognition
  • By Sunny Tang

2
Outline
  • Introduction
  • Requirements
  • Eigenface
  • Fisherface
  • Elastic bunch graph
  • Comparison

3
Introduction
  • What is face recognition?
  • Applications
  • Security applications
  • Image search engine

4
Requirements
  • Accurate
  • Efficient
  • Light invariant
  • Rotation invariant

5
Eigenface
  • Euclidean distance between images
  • Principal component analysis (PCA)
  • For training set T1, T2, TM
  • Average face ? 1/MS TM
  • Difference vector fi Ti ?
  • Covariance matrix C 1/MS fn fTn

6
PCA
7
Recognition
  • Projection in Eigenface
  • Projection ?i W (T ?)
  • W eigenvectors
  • Compare projections

8
Fisherface
  • Similar approach to Eigerface
  • Fishers Linear Discriminant (FLD)
  • PCA
  • Scatter Matrix
  • Projection Matrix

9
Fisherface
  • FLD
  • Between-class scatter matrix
  • Within-class scatter matrix
  • Projection Matrix

10
FLD
11
Elastic Bunch Graph
  • Gabor wavelet decomposition
  • Gabor kernels

12
Gabor Filters
13
Jets
  • Small patch gray values
  • Wavelet transform

14
Comparing Jets
  • Amplitude similarity
  • Phase similarity

15
Comparing Jets
16
Face Bunch Graphs (FBG)
  • Stack like general representation
  • Two types of FBG
  • Normalization stage
  • Graph extraction stage
  • Graph similarity function

17
Graph Extraction
  • Step 1 find approximate face position
  • Step 2 refine position and size
  • Step 3 refine size and find aspect ratio
  • Step 4 local distortion

18
Recognition
  • Comparing image graph
  • Recognized for highest similarity

19
Comparison
  • Eigenface
  • Fast, easy implementation
  • Fisherface
  • Light invariant, better classification
  • Elastic bunch graph
  • Rotation, light, scale invariant

20
Q A Section
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