Sciweavers

BMVC
2010

Additive Update Predictors in Active Appearance Models

13 years 9 months ago
Additive Update Predictors in Active Appearance Models
The Active Appearance Model (AAM) provides an efficient method for localizing objects that vary in both shape and texture, and uses a linear regressor to predict updates to model parameters based on current image residuals. This study investigates using additive (or `boosted') predictors, both linear and non-linear, as a substitute for the linear predictor in order to improve accuracy and efficiency. We demonstrate: (a) a method for training additive models that is several times faster than the standard approach without sacrificing accuracy; (b) that linear additive models can serve as an effective substitute for linear regression; (c) that linear models are as effective as non-linear models when close to the true solution. Based on these observations, we compare a `hybrid' AAM to the standard AAM for both the XM2VTS and BioID datasets, including cross-dataset evaluations.
Philip A. Tresadern, Patrick Sauer, Timothy F. Coo
Added 10 Feb 2011
Updated 10 Feb 2011
Type Journal
Year 2010
Where BMVC
Authors Philip A. Tresadern, Patrick Sauer, Timothy F. Cootes
Comments (0)