TY - GEN
T1 - Soft biometric gender classification using face for real time surveillance in cross dataset environment
AU - Ahmad, Faizan
AU - Ahmed, Zeeshan
AU - Najam, Aaima
PY - 2014/2/6
Y1 - 2014/2/6
N2 - Gender classification is a challenging task in surveillance videos due to their relatively low solution, uncontrolled environment and viewing angles of an object. It has potential applications as well in visual surveillance and human-computer interaction systems. While a lot of work have considered still face images for soft biometrics recognition and applied still image-based methods, recent developments indicated that excellent results can be obtain on moving faces using texture-based spatiotemporal representations to describe and analyze faces in videos. This paper investigates the combination of facial appearance and motion for face analysis in videos. We proposed an approach for gender classification in spatiotemporal environment from videos by using huge set of training features derived from rich collection of various datasets. We tested our system with several publicly available videos, which have been taken in un-controlled environment in terms of background, light, expression, motion, angle and appearance. We also tested our system with several self recorded surveillance videos. Our extensive cross dataset experimental analysis clearly assessed the promising performance of our system for gender classification using faces in videos. Another novel part of our current research negates the recent theory based on experimental results which claimed that the combination of motion and appearance is only useful for gender analysis of familiar faces.
AB - Gender classification is a challenging task in surveillance videos due to their relatively low solution, uncontrolled environment and viewing angles of an object. It has potential applications as well in visual surveillance and human-computer interaction systems. While a lot of work have considered still face images for soft biometrics recognition and applied still image-based methods, recent developments indicated that excellent results can be obtain on moving faces using texture-based spatiotemporal representations to describe and analyze faces in videos. This paper investigates the combination of facial appearance and motion for face analysis in videos. We proposed an approach for gender classification in spatiotemporal environment from videos by using huge set of training features derived from rich collection of various datasets. We tested our system with several publicly available videos, which have been taken in un-controlled environment in terms of background, light, expression, motion, angle and appearance. We also tested our system with several self recorded surveillance videos. Our extensive cross dataset experimental analysis clearly assessed the promising performance of our system for gender classification using faces in videos. Another novel part of our current research negates the recent theory based on experimental results which claimed that the combination of motion and appearance is only useful for gender analysis of familiar faces.
KW - Face Perception
KW - Facial Dynamics
KW - Gender Classification
KW - Gender Identification
KW - Soft Biometrics Analysis
KW - Video Surveillance
UR - http://www.scopus.com/inward/record.url?scp=84894490350&partnerID=8YFLogxK
U2 - 10.1109/INMIC.2013.6731338
DO - 10.1109/INMIC.2013.6731338
M3 - Conference contribution
AN - SCOPUS:84894490350
SN - 9781479930432
T3 - 2013 16th International Multi Topic Conference, INMIC 2013
SP - 131
EP - 135
BT - 2013 16th International Multi Topic Conference, INMIC 2013
PB - IEEE Computer Society
T2 - 2013 16th International Multi Topic Conference, INMIC 2013
Y2 - 19 December 2013 through 20 December 2013
ER -