Abstract:
Research in face and gender recognition under constrained environment has achieved an acceptable level of performance. There have been advancements in face and gender recognition
in unconstrained environment, however, there is signi ficant scope of improvement in surveillance domain. Face and gender recognition in such a setting poses a set of challenges including
unreliable face detection, multiple subjects performing different actions, low resolution, and
sensor interoperability. Existing video face databases contain one subject in a video sequence.
However, real world video sequences are more challenging and generally contain more than one
person in a video. This thesis provide the annotated crowd video face database with more than
200 videos pertaining to more than 100 individuals, along with face landmark information and
gender annotation to encourage research in this important problem. We provide two distinct
use-case scenarios, de ne their experimental protocols, and report baseline veri cation results
existing on two face recognition systems, OpenBR and FaceVACS. Gender classi cation is also
performed on this database and the results are reported using OpenBR along with a combination
of di erent feature extractors with SVM classi cation. The results show that both the baseline
results do not yield more than 0.16 genuine accept rate at 0.01 false accept rate. A software
package is also developed to help researchers evaluate their systems using the de ned protocols.