TY - JOUR
T1 - Regression based automatic face annotation for deformable model building
AU - Asthana, Akshay
AU - Lucey, Simon
AU - Goecke, Roland
PY - 2011/10
Y1 - 2011/10
N2 - A major drawback of statistical models of non-rigid, deformable objects, such as the active appearance model (AAM), is the required pseudo-dense annotation of landmark points for every training image. We propose a regression-based approach for automatic annotation of face images at arbitrary pose and expression, and for deformable model building using only the annotated frontal images. We pose the problem of learning the pattern of manual annotation as a data-driven regression problem and explore several regression strategies to effectively predict the spatial arrangement of the landmark points for unseen face images, with arbitrary expression, at arbitrary poses. We show that the proposed fully sparse non-linear regression approach outperforms other regression strategies by effectively modelling the changes in the shape of the face under varying pose and is capable of capturing the subtleties of different facial expressions at the same time, thus, ensuring the high quality of the generated synthetic images. We show the generalisability of the proposed approach by automatically annotating the face images from four different databases and verifying the results by comparing them with a ground truth obtained from manual annotations.
AB - A major drawback of statistical models of non-rigid, deformable objects, such as the active appearance model (AAM), is the required pseudo-dense annotation of landmark points for every training image. We propose a regression-based approach for automatic annotation of face images at arbitrary pose and expression, and for deformable model building using only the annotated frontal images. We pose the problem of learning the pattern of manual annotation as a data-driven regression problem and explore several regression strategies to effectively predict the spatial arrangement of the landmark points for unseen face images, with arbitrary expression, at arbitrary poses. We show that the proposed fully sparse non-linear regression approach outperforms other regression strategies by effectively modelling the changes in the shape of the face under varying pose and is capable of capturing the subtleties of different facial expressions at the same time, thus, ensuring the high quality of the generated synthetic images. We show the generalisability of the proposed approach by automatically annotating the face images from four different databases and verifying the results by comparing them with a ground truth obtained from manual annotations.
KW - Active appearance model
KW - Automatic face annotation
KW - Correspondence problem
KW - Deformable face model
UR - http://www.scopus.com/inward/record.url?scp=79958782143&partnerID=8YFLogxK
U2 - 10.1016/j.patcog.2011.03.014
DO - 10.1016/j.patcog.2011.03.014
M3 - Article
SN - 0031-3203
VL - 44
SP - 2598
EP - 2613
JO - Pattern Recognition
JF - Pattern Recognition
IS - 10-11
ER -