Abstract

Fitting algorithms for Active Appearance Models (AAMs) are usually considered to be robust but slow or fast but less able to generalize well to unseen variations. In this paper, we look into AAM fitting algorithms and make the following orthogonal contributions: We present a simple “project-out” optimization framework that unifies and revises the most well-known optimization problems and solutions in AAMs. Based on this framework, we describe robust simultaneous AAM fitting algorithms the complexity of which is not prohibitive for current systems. We then go on one step further and propose a new approximate project-out AAM fitting algorithm which we coin Extended Project-Out Inverse Compositional (E-POIC). In contrast to current algorithms, E-POIC is both efficient and robust. Next, we describe a part-based AAM employing a translational motion model, which results in superior fitting and convergence properties. We also show that the proposed AAMs, when trained “in-the-wild” using SIFT descriptors, perform surprisingly well even for the case of unseen unconstrained images. Via a number of experiments on unconstrained human and animal face databases, we show that our combined contributions largely bridge the gap between exact and current approximate methods for AAM fitting and perform comparably with state-of-the-art face alignment systems.

Highlights

  • Pioneered by Cootes et al (2001) and revisited by Matthews and Baker (2004), Active Appearance Models (AAMs) have been around in computer vision research for more than 15 years

  • – Case 2: Evaluation of SIFT-based AAMs We report the fitting performance of the proposed algorithms when the appearance model was built using SIFT features for all three databases, and we focus on whether the proposed efficient weighted least-squares optimization of SIFTbased AAMs results in any loss in performance

  • We presented a framework for fitting AAMs to unconstrained images

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Summary

Introduction

Pioneered by Cootes et al (2001) and revisited by Matthews and Baker (2004), Active Appearance Models (AAMs) have been around in computer vision research for more than 15 years They are statistical models of shape and appearance that can generate instances of a specific object class (e.g. faces) given a small number of model parameters. Standard gradient descend algorithms when applied to AAM fitting are inefficient This problem was addressed in the seminal work of Matthews and Baker (2004) which extends the LK algorithm and the appearancebased tracking framework of Hager and Belhumeur (1998) for the case of AAMs and deformable models. Other techniques for reducing the cost to some extent via pre-computations have been reported in Batur and Hayes (2005) and Netzell and Solem (2008)

Summary of Contributions and Paper Roadmap
State-of-the-Art in Face Alignment
Active Appearance Models
Background on Fitting AAMs
An Optimization Framework for Efficient Fitting of AAMs
E-POIC-v1
E-POIC-v2
The Extended Project-Out Inverse Compositional Algorithm
Fitting AAMs to Unconstrained Images
Part-Based Active Appearance Models
Generative DPM
Fitting Generative DPMs with Gauss–Newton
Comparison with AAMs
Efficient Weighted Least-Squares Optimization of SIFT-AAMs
10 Results
11 Conclusions
Full Text
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