Title
Wedgelet Enhanced Appearance Models
Abstract
Statistical region-based segmentation methods such as the Active Appearance Model (AAM) are used for establishing dense correspondences in images based on learning the variation in shape and pixel intensities in a training set. For low resolution 2D images correspondences can be recovered reliably in real-time. However, as resolution increases this becomes infeasible due to excessive storage and computational requirements. In this paper we propose to reduce the textural components by modelling the coefficients of a wedgelet based regression tree instead of the original pixel intensities. The wedgelet regression trees employed are based on triangular domains and estimated using cross validation. The wedgelet regression trees are functional descriptions of the intensity information and serve to 1) reduce noise and 2) produce a compact textural description. The wedgelet enhanced appearance model is applied to a case study of human faces. Compression ratios of the texture information of 1:40 is obtained without sacrificing segmentation accuracy notably, even at compression ratios of 1:150 fair segmentation is achieved.
Year
DOI
Venue
2004
10.1109/CVPR.2004.204
CVPR Workshops
Field
DocType
ISBN
Active shape model,Computer vision,Pattern recognition,Segmentation,Markov random field,Computer science,Active appearance model,Image segmentation,Artificial intelligence,Pixel,Cross-validation,Image resolution
Conference
0-7695-2158-4
Citations 
PageRank 
References 
8
0.59
20
Authors
4
Name
Order
Citations
PageRank
Sune Darkner111520.04
Rasmus Larsen298889.80
Mikkel B. Stegmann345028.81
Bjarne Ersbøll445038.06