DocumentCode :
1759635
Title :
Investigating the Periocular-Based Face Recognition Across Gender Transformation
Author :
Mahalingam, Gayathri ; Ricanek, Karl ; Albert, A. Midori
Author_Institution :
Dept. of Comput. Sci., Univ. of North Carolina at Wilmington, Wilmington, NC, USA
Volume :
9
Issue :
12
fYear :
2014
fDate :
Dec. 2014
Firstpage :
2180
Lastpage :
2192
Abstract :
This paper introduces a novel face recognition problem domain: the medically altered face for gender transformation. A data set of >1.2 million face images was constructed from wild videos obtained from You Tube of 38 subjects undergoing hormone replacement therapy (HRT) for gender transformation over a period of several months to three years. The HRT achieves gender transformation by severely altering the balance of sex hormones, which causes changes in the physical appearance of the face and body. This paper explores that the impact of face changes due to hormone manipulation and its ability to disguise the face and hence, its ability to effect match rates. Face disguise is achieved organically as hormone manipulation causes pathological changes to the body resulting in a modification of face appearance. This paper analyzes and evaluates face components versus full face algorithms in an attempt to identify regions of the face that are resilient to the HRT process. The experiments reveal that periocular face components using simple texture-based face matchers, local binary patterns, histogram of gradients, and patch-based local binary patterns out performs matching against the full face. Furthermore, the experiments reveal that a fusion of the periocular using one of the simple texture-based approaches (patched-based local binary patterns) out performs two Commercial Off The Shelf Systems full face systems: 1) PittPatt SDK and 2) Cognetic FaceVACs v8.5. The evaluated periocular-fused patch-based face matcher outperforms PittPatt SDK v5.2.2 by 76.83% and Cognetic FaceVACS v8.5 by 56.23% for rank-1 accuracy.
Keywords :
face recognition; image matching; image texture; medical computing; Cognetic FaceVACs v8.5; HRT process; PittPatt SDK v5.2.2; You Tube; commercial off the shelf systems; face appearance; face disguise; face images; full face algorithm; gender transformation; histogram of gradient; hormone manipulation; hormone replacement therapy; medically altered face; patch-based local binary pattern; pathological changes; periocular face component; periocular-based face recognition; periocular-fused patch-based face matcher; sex hormones; texture-based approach; texture-based face matcher; Biochemistry; Face; Face recognition; Feature extraction; Shape; Surgery; Periocular recognition; disguise; face recognition; gender transformation; hormone replacement therapy; medical alteration; periocular recognition; plastic surgery; transgender;
fLanguage :
English
Journal_Title :
Information Forensics and Security, IEEE Transactions on
Publisher :
ieee
ISSN :
1556-6013
Type :
jour
DOI :
10.1109/TIFS.2014.2361479
Filename :
6915725
Link To Document :
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