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Face Recognition

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Face Recognition A Literature Review By Xiaozhen Niu Department of Computing Science Contents Face Segmentation/Detection Facial Feature extraction Face Recognition ... – PowerPoint PPT presentation

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Title: Face Recognition


1
Face Recognition
  • A Literature Review
  • By Xiaozhen Niu
  • Department of Computing Science

2
Contents
  • Face Segmentation/Detection
  • Facial Feature extraction
  • Face Recognition
  • Video-based Face Recognition
  • Comparison
  • Summary
  • Reference

3
Face Segmentation/Detection
  • Before the middle 90s, the research attention
    was only focused on single-face segmentation. The
    approaches included
  • Deformable feature-based template
  • Neural network
  • Using skin color

4
Face Segmentation/Detection
  • During the past ten years, considerable progress
    has been made in multi-face recognition area,
    includes
  • Example-based learning approach by Sung and
    Poggio (1994).
  • The neural network approach by Rowley et al.
    (1998).
  • Support vector machine (SVM) by Osuna et al.
    (1997).

5
Example-based learning approach (EBL)
  • Three parts
  • The image is divided into many possible-overlappin
    g windows, each window pattern gets classified as
    either a face or not a face based on a set of
    local image measurements.
  • For each new pattern to be classified, the system
    computes a set of different measurements between
    the new pattern and the canonical face model.
  • A trained classifier identifies the new pattern
    as a face or not a face.

6
Example of a system using EBL
7
Neural network (NN)
  • Kanade et al. first proposed an NN-based approach
    in 1996.
  • Although NN have received significant attention
    in many research areas, few applications were
    successful.
  • Why?

8
Neural network (NN)
  • Its easy to train a neural network with samples
    which contain faces, but it is much harder to
    train a neural network with samples which do not.
  • The number of non-face simples are just too
    large.

9
Neural network (NN)
  • Neural network-based filter. A small filter
    window is used to scan through all portions of
    the image, and to detect whether a face exists in
    each window.
  • Merging overlapping detections and arbitration.
    By setting a small threshold, many false
    detections can be eliminated.

10
An example of using NN
11
Test results of using NN
12
SVM
  • SVM was first proposed in 1997, it can be viewed
    as a way to train polynomial neural network or
    radial basic function classifiers.
  • Can improve the accuracy and reduce the
    computation.

13
Comparison with EBL
  • Test results reported in 1997.
  • Using two test sets (155 faces). SVM achieved
    better detection rate and fewer false alarms.

14
Recent approaches
  • Face segmentation/detection area still remain
    active, for example
  • An integrated SVM approach to multi-face
    detection and recognition was proposed in 2000.
  • A technique of background learning was proposed
    in August 2002.
  • Still lots of potential!

15
Static face recognition
  • Numerous face recognition methods/algorithms
    have been proposed in last 20 years, several
    representative approaches are
  • Eigenface
  • LDA/FDA
  • Neural network (NN)

16
Eigenface
  • The basic steps are
  • Registration. A face in an input image first must
    be located and registered in a standard-size
    frame.
  • Eigenpresentation. Every face in the database can
    be represented as a vector of weights, the
    principal component analysis (PCA) is used to
    encode face images and capture face features.
  • Identification. This part is done by locating the
    images in the database whose weights are the
    closest (in Euclidean distance) to the weights of
    the test images.

17
LDA/FDA
  • Face recognition method using LDA/FDA is called
    the fishface method.
  • Eigenface use linear PCA. It is not optimal to
    discrimination for one face class from others.
  • Fishface method seeks to find a linear
    transformation to maximize the between-class
    scatter and minimize the within-class scatter.
  • Test results demonstrated LDA/FDA is better than
    eigenface using linear PCA (1997).

18
Test results of LDA
  • Test results of a subspace LDA-based face
    recognition method in 1999.

19
Video-based Face Recognition
  • Three challenges
  • Low quality
  • Small images
  • Characteristics of face/human objects.
  • Three advantage
  • Allows Provide much more information.
  • Tracking of face image.
  • Provides continuity, this allows reuse of
    classification information from high-quality
    images in processing low-quality images from a
    video sequence.

20
Basic steps for video-based face recognition
  • Object segmentation/detection.
  • Motion structure. The goal of this step is to
    estimate the 3D depths of points from the image
    sequence.
  • 3D models for faces. Using a 3D model to match
    frontal views of the face.
  • Non-rigid motion analysis.

21
Recent approaches
  • Most video-based face recognition system has
    three modules for detection, tracking and
    recognition.
  • An access control system using Radial Basis
    Function (RBS) network was proposed in 1997.
  • A generic approach based on posterior estimation
    using sequential Monte Carlo methods was proposed
    in 2000.
  • A scheme based on streaming face recognition
    (SFR) was propose in August 2002.

22
The SFR scheme
  • Combine several decision rules together, such as
    Discrete Hidden Markov Models (DHMM) and
    Continuous Density HMM (CDHMM). The test result
    achieved a 99 correct recognition rate in the
    intelligent room.

23
Comparison
  • Two most representative and important protocols
    for face recognition evaluations
  • The FERET protocol (1994).
  • Consists of 14,126 images of 1199 individuals.
  • Three evaluation tests had been administered in
    1994, 1996, and 1997.
  • The XM2VTS protocol (1999).
  • Expansion of previous M2VTS program (5 shots of
    each of 37 subjects).
  • Now consists 295 subjects.
  • The results of M2VTS/XM2VTS can be used in wide
    range of applications.

24
1996/1997 FERET Evaluations
  • Compared ten algorithms.

25
Summary
  • Significant achievements have been made.
    LDA-based methods and NN-based methods are very
    successful.
  • FERET and XM2VTS have had a significant impact to
    the developing of face recognition algorithms.
  • Challenges still exist, such as pose changing and
    illumination changing. Face recognition area will
    remain active for a long time.

26
Reference
  • 1 W. Zhao, R. Chellappa, A. Rosenfeld, and
    P.J. Phillips, Face Recognition A Literature
    Survey, UMD CFAR Technical Report CAR-TR-948,
    2000.
  • 2 K. Sung and T. Poggio, Example-based
    Learning for View-based Human Face Detection,
    A.I. Memo 1521, MIT A.I. Laboratory, 1994.
  • 3 H.A. Rowley, S. Baluja, and T. Kanade,
    Neural Network Based Face Detection, IEEE Trans.
    On Pattern Analysis and Machine Intelligence,
    Vol. 20, 1998.
  • 4 E. Osuna, R. Freund, and F. Girosi, Training
    Support Vector Machines An Application to Face
    Recognition, in IEEE Conference on Computer
    Vision and Pattern Recognition, pp. 130-136,
    1997.
  • 5 M. Turk and A. Pentland, Eigenfaces for
    Recognition, Journal of Cognitive Neuroscience,
    Vol.3, pp. 72-86, 1991.
  • 6 W. Zhao, Robust Image Based 3D Face
    Recognition, PhD thesis, University of Maryland,
    1999.
  • 7 K.S. Huang and M.M. Trivedi, Streaming Face
    Recognition using Multicamera Video Arrays, 16th
    International Conference on Pattern Recognition
    (ICPR). August 11-15, 2002.
  • 8 P.J. Phillips, P. Rauss, and S. Der, FERET
    (Face Recognition Technology) Recognition
    Algorithm Development and Test Report, Technical
    Report ARL-TR 995, U.S. Army Research Laboratory.
  • 9 K. Messer, J. Matas, J. Kittler, J. Luettin,
    and G. Maitre, XM2VTSDB The Extended M2VTS
    Database, in Proceedings, International
    Conference on Audio and Video-based Person
    Authentication, pp. 72-77, 1999.

27
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