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학술연구

Two-dimensional Orthogonalized Fisher Discriminant Analysis for Face Recognition

원문정보

얼굴 인식을 위한 이차원 직교 FDA 방법

Dong-Jin Kwon, Un-Dong Jang

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초록

영어

This paper presents a new feature representation method, named two- dimensional orthogonalized Fisher discriminant analysis(2D-OFD). The method adopts the 2D-LDA and orthogonalization of Fisher vector. It produces the small size scatter matrix than 1D method. Therefore it can evaluate the scatter matrix accurately. In addition, it is not suffered from small sample size problem. The orthogonalization eliminates the linear dependences among Fisher's discriminant vectors. As a result, it promotes the discriminant capability of the 2D-LDA. The proposed method is tested on the ORL face image database. We test our method 10 times. For each experiment, five training images are randomly chosen each person and the other five images are used for testing. The test show that the average recognition rate is 96.2%. When the image is downsampled to 28x23 matrix to reduce the computational complexity, the average recognition rate is 95.9%.

목차

Abstract
 1. Introduction
 2. Two-dimensional Orthogonalized Fisher discriminant analysis
  2.1 2D-LDA
  2.2 2D-OFD
  2.3 Classification
 3. Experimental results
 4. Conclusion
 References

저자정보

  • Dong-Jin Kwon 권동진. 서일대학교 컴퓨터전자과
  • Un-Dong Jang 장언동. LG전자

참고문헌

자료제공 : 네이버학술정보

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