Various Decomposition Methods Applied to Face Recognition

Jaepil Ko, Eunju Kim, Hyeran Byun

Research output: Contribution to conferencePaper

2 Citations (Scopus)

Abstract

Face recognition has mainly focused on face representation, so a simple classifier is frequently used. For a robust system, it is common to construct a multiclass classifier by combining outputs of several binary ones. In this paper, we overviews basic decomposition and decoding schemes and propose new methods then give empirical results of recognition performance on the ORL face dataset.

Original languageEnglish
Pages2175-2180
Number of pages6
Publication statusPublished - 2003 Sep 24
EventInternational Joint Conference on Neural Networks 2003 - Portland, OR, United States
Duration: 2003 Jul 202003 Jul 24

Other

OtherInternational Joint Conference on Neural Networks 2003
CountryUnited States
CityPortland, OR
Period03/7/2003/7/24

Fingerprint

Face recognition
Classifiers
Decomposition
Decoding

All Science Journal Classification (ASJC) codes

  • Software
  • Artificial Intelligence

Cite this

Ko, J., Kim, E., & Byun, H. (2003). Various Decomposition Methods Applied to Face Recognition. 2175-2180. Paper presented at International Joint Conference on Neural Networks 2003, Portland, OR, United States.
Ko, Jaepil ; Kim, Eunju ; Byun, Hyeran. / Various Decomposition Methods Applied to Face Recognition. Paper presented at International Joint Conference on Neural Networks 2003, Portland, OR, United States.6 p.
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Ko, J, Kim, E & Byun, H 2003, 'Various Decomposition Methods Applied to Face Recognition', Paper presented at International Joint Conference on Neural Networks 2003, Portland, OR, United States, 03/7/20 - 03/7/24 pp. 2175-2180.

Various Decomposition Methods Applied to Face Recognition. / Ko, Jaepil; Kim, Eunju; Byun, Hyeran.

2003. 2175-2180 Paper presented at International Joint Conference on Neural Networks 2003, Portland, OR, United States.

Research output: Contribution to conferencePaper

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Ko J, Kim E, Byun H. Various Decomposition Methods Applied to Face Recognition. 2003. Paper presented at International Joint Conference on Neural Networks 2003, Portland, OR, United States.