Authors
Geof Givens, J Ross Beveridge, Bruce A Draper, David Bolme
Publication date
2003/6/16
Conference
2003 Conference on Computer Vision and Pattern Recognition Workshop
Volume
8
Pages
96-96
Publisher
IEEE
Description
Some people's faces are easier to recognize than others, but it is not obvious what subject-specific factors make individual faces easy or difficult to recognize. This study considers 11 factors that might make recognition easy or difficult for 1,072 human subjects in the FERET dataset. The specific factors are: race (white, Asian, African-American, or other), gender, age (young or old), glasses (present or absent), facial hair (present or absent), bangs (present or absent), mouth (closed or other), eyes (open or other), complexion (clear or other), makeup (present or absent), and expression (neutral or other). An ANOVA is used to determine the relationship between these subject covariates and the distance between pairs of images of the same subject in a standard Eigenfaces subspace. Some results are not terribly surprising. For example, the distance between pairs of images of the same subject increases for people who …
Total citations
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Scholar articles
G Givens, JR Beveridge, BA Draper, D Bolme - 2003 Conference on Computer Vision and Pattern …, 2003