TY - GEN
T1 - Learning-based face synthesis for pose-robust recognition from single image
AU - Asthana, Akshay
AU - Sanderson, Conrad
AU - Gedeon, Tom
AU - Goecke, Roland
PY - 2009
Y1 - 2009
N2 - Face recognition in real-world conditions requires the ability to deal with a number of conditions, such as variations in pose, illumination and expression. In this paper, we focus on variations in head pose and use a computationally efficient regression-based approach for synthesising face images in different poses, which are used to extend the face recognition training set. In this data-driven approach, the correspondences between facial landmark points in frontal and non-frontal views are learnt offline from manually annotated training data via Gaussian Process Regression. We then use this learner to synthesise non-frontal face images from any unseen frontal image. To demonstrate the utility of this approach, two frontal face recognition systems (the commonly used PCA and the recent Multi-Region Histograms) are augmented with synthesised non-frontal views for each person. This synthesis and augmentation approach is experimentally validated on the FERET dataset, showing a considerable improvement in recognition rates for ±40° and ±60° views, while maintaining high recognition rates for ±15° and ±25° views.
AB - Face recognition in real-world conditions requires the ability to deal with a number of conditions, such as variations in pose, illumination and expression. In this paper, we focus on variations in head pose and use a computationally efficient regression-based approach for synthesising face images in different poses, which are used to extend the face recognition training set. In this data-driven approach, the correspondences between facial landmark points in frontal and non-frontal views are learnt offline from manually annotated training data via Gaussian Process Regression. We then use this learner to synthesise non-frontal face images from any unseen frontal image. To demonstrate the utility of this approach, two frontal face recognition systems (the commonly used PCA and the recent Multi-Region Histograms) are augmented with synthesised non-frontal views for each person. This synthesis and augmentation approach is experimentally validated on the FERET dataset, showing a considerable improvement in recognition rates for ±40° and ±60° views, while maintaining high recognition rates for ±15° and ±25° views.
UR - http://www.scopus.com/inward/record.url?scp=84898916507&partnerID=8YFLogxK
U2 - 10.5244/C.23.31
DO - 10.5244/C.23.31
M3 - Conference contribution
SN - 1901725391
SN - 9781901725391
T3 - British Machine Vision Conference, BMVC 2009 - Proceedings
BT - British Machine Vision Conference, BMVC 2009 - Proceedings
PB - British Machine Vision Association, BMVA
T2 - 2009 20th British Machine Vision Conference, BMVC 2009
Y2 - 7 September 2009 through 10 September 2009
ER -