Literature DB >> 11374202

Computational and performance aspects of PCA-based face-recognition algorithms.

H Moon1, P J Phillips.   

Abstract

Algorithms based on principal component analysis (PCA) form the basis of numerous studies in the psychological and algorithmic face-recognition literature. PCA is a statistical technique and its incorporation into a face-recognition algorithm requires numerous design decisions. We explicitly state the design decisions by introducing a generic modular PCA-algorithm. This allows us to investigate these decisions, including those not documented in the literature. We experimented with different implementations of each module, and evaluated the different implementations using the September 1996 FERET evaluation protocol (the de facto standard for evaluating face-recognition algorithms). We experimented with (i) changing the illumination normalization procedure; (ii) studying effects on algorithm performance of compressing images with JPEG and wavelet compression algorithms; (iii) varying the number of eigenvectors in the representation; and (iv) changing the similarity measure in the classification process. We performed two experiments. In the first experiment, we obtained performance results on the standard September 1996 FERET large-gallery image sets. In the second experiment, we examined the variability in algorithm performance on different sets of facial images. The study was performed on 100 randomly generated image sets (galleries) of the same size. Our two most significant results are (i) changing the similarity measure produced the greatest change in performance, and (ii) that difference in performance of +/- 10% is needed to distinguish between algorithms.

Mesh:

Year:  2001        PMID: 11374202     DOI: 10.1068/p2896

Source DB:  PubMed          Journal:  Perception        ISSN: 0301-0066            Impact factor:   1.490


  3 in total

1.  Principal component model of multispectral data for near real-time skin chromophore mapping.

Authors:  Jana M Kainerstorfer; Martin Ehler; Franck Amyot; Moinuddin Hassan; Stavros G Demos; Victor Chernomordik; Christoph K Hitzenberger; Amir H Gandjbakhche; Jason D Riley
Journal:  J Biomed Opt       Date:  2010 Jul-Aug       Impact factor: 3.170

2.  Automated emergency paramedical response system.

Authors:  Mashrin Srivastava; Saumya Suvarna; Apoorva Srivastava; S Bharathiraja
Journal:  Health Inf Sci Syst       Date:  2018-11-13

3.  Evaluation of non-invasive multispectral imaging as a tool for measuring the effect of systemic therapy in Kaposi sarcoma.

Authors:  Jana M Kainerstorfer; Mark N Polizzotto; Thomas S Uldrick; Rafa Rahman; Moinuddin Hassan; Laleh Najafizadeh; Yasaman Ardeshirpour; Kathleen M Wyvill; Karen Aleman; Paul D Smith; Robert Yarchoan; Amir H Gandjbakhche
Journal:  PLoS One       Date:  2013-12-27       Impact factor: 3.240

  3 in total

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