In this paper, we investigate an application that integrates holistic appearance based method and feature based method for face recognition. The automatic face recognition system makes use of multiscale Kernel PCA (Principal Component Analysis) characterized approximated face images and reduced the number of invariant SIFT (Scale Invariant Feature Transform) keypoints extracted from face projected feature space. To achieve higher variance in the inter-class face images, we compute principal components in higher-dimensional feature space to project a face image onto some approximated kernel eigenfaces. As long as feature spaces retain their distinctive characteristics, reduced number of SIFT points are detected for a number of principal components and keypoints are then fused using user-dependent weighting scheme and form a feature vector. The proposed method is tested on ORL face database, and the efficacy of the system is proved by the test results computed using the proposed algorithm.

SIFT fusion of kernel eigenfaces for face recognition / Kisku, Dakshina R.; Tistarelli, Massimo; Gupta, Phalguni; Sing, Jamuna K.. - 9652:(2015), pp. 96520O-96520O-8. ( Optics and Photonics for Counterterrorism, Crime Fighting, and Defence XI; and Optical Materials and Biomaterials in Security and Defence Systems Technology XII fra 2015) [10.1117/12.2190205].

SIFT fusion of kernel eigenfaces for face recognition

TISTARELLI, Massimo;
2015-01-01

Abstract

In this paper, we investigate an application that integrates holistic appearance based method and feature based method for face recognition. The automatic face recognition system makes use of multiscale Kernel PCA (Principal Component Analysis) characterized approximated face images and reduced the number of invariant SIFT (Scale Invariant Feature Transform) keypoints extracted from face projected feature space. To achieve higher variance in the inter-class face images, we compute principal components in higher-dimensional feature space to project a face image onto some approximated kernel eigenfaces. As long as feature spaces retain their distinctive characteristics, reduced number of SIFT points are detected for a number of principal components and keypoints are then fused using user-dependent weighting scheme and form a feature vector. The proposed method is tested on ORL face database, and the efficacy of the system is proved by the test results computed using the proposed algorithm.
2015
Inglese
Burgess, Douglas
Proceedings of SPIE - The International Society for Optical Engineering
Contributo
Optics and Photonics for Counterterrorism, Crime Fighting, and Defence XI; and Optical Materials and Biomaterials in Security and Defence Systems Technology XII
9652
96520O
96520O-8
8
9781628418620
http://spie.org/x1848.xml
SPIE
Comitato scientifico
2015
fra
Face; Feature-based approach; Fusion; Holistic approach; Kernel PCA; Recognition; SIFT descriptor; Electronic, Optical and Magnetic Materials; Condensed Matter Physics; Computer Science Applications1707 Computer Vision and Pattern Recognition; Applied Mathematics; Electrical and Electronic Engineering
SIFT fusion of kernel eigenfaces for face recognition / Kisku, Dakshina R.; Tistarelli, Massimo; Gupta, Phalguni; Sing, Jamuna K.. - 9652:(2015), pp. 96520O-96520O-8. ( Optics and Photonics for Counterterrorism, Crime Fighting, and Defence XI; and Optical Materials and Biomaterials in Security and Defence Systems Technology XII fra 2015) [10.1117/12.2190205].
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
Kisku, Dakshina R.; Tistarelli, Massimo; Gupta, Phalguni; Sing, Jamuna K.
273
4
none
info:eu-repo/semantics/conferenceObject
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11388/176841
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