Title
Adaptive active appearance model with incremental learning
Abstract
The active appearance model (AAM) is a well-known model that can represent a non-rigid object like the face effectively. However, the AAM often fails to converge correctly when the illumination conditions of face images change largely because it uses a set of fixed appearance basis vectors that are usually obtained in a training phase. To overcome this problem, we propose an adaptive AAM that updates the appearance basis vectors with the current face image by the incremental principal component analysis (PCA). However, the update of the appearance basis vectors with ill-fitted face images can worsen the AAM fitting to the forthcoming face images. To avoid this situation, we devise a conditional update method that updates the appearance basis vectors when the AAM fitting is good and the AAM reconstruction error is large. We evaluate the goodness of AAM fitting in terms of the number of outliers. When the AAM fitting is good we update the online appearance model (OAM) parameters, where the OAM is taken to keep the variation of input face image continuously, and also evaluate the goodness of the appearance basis vectors in terms of the magnitude of AAM reconstruction error. When the appearance basis vectors of the current AAM produces a large AAM reconstruction error, we update the appearance basis vectors using the incremental PCA. The proposed conditional update of the appearance basis vectors stabilizes the AAM fitting and improves the face tracking performance especially when the illumination condition changes very dynamically. Experimental results show that the adaptive AAM is superior to the conventional AAM in terms of the occurrence rate of fitting error and the fitting accuracy.
Year
DOI
Venue
2009
10.1016/j.patrec.2008.11.006
Pattern Recognition Letters
Keywords
Field
DocType
appearance basis,incremental principal component analysis,active appearance model,online appearance model,face tracking active appearance model aam incremental learning incremental principal component analysis online appearance model robust statistics,large aam reconstruction error,robust statistics,aam fitting,active appearance model (aam),face tracking,adaptive active appearance model,appearance basis vector,adaptive aam,aam reconstruction error,fixed appearance basis vector,incremental learning,conventional aam,current aam
Facial recognition system,Computer vision,Pattern recognition,Outlier,Active appearance model,Robust statistics,Artificial intelligence,Biometrics,Basis (linear algebra),Mathematics,Facial motion capture,Principal component analysis
Journal
Volume
Issue
ISSN
30
4
Pattern Recognition Letters
Citations 
PageRank 
References 
17
0.75
17
Authors
2
Name
Order
Citations
PageRank
Jaewon Sung11529.57
Daijin Kim21882126.85