The paper presents an extension of active appearance models (AAMs) that is better capable of dealing with the large variation in face appearance that is encountered in large multi-person face data sets. Instead of the traditional PCA-based texture model, our extended AAM employs a mixture of probabilistic PCA to describe texture variation, leading to a richer model. The resulting extended AAM can be efficiently fitted to held-out test images using an adapted version of the inverse compositional algorithm: the computational complexity scales linearly with the number of components in the texture mixture. The results of our experiments on three face data sets illustrate the merits of our extended AAM.MediamaticsElectrical Engineering, Mathemat...
Active Appearance Models (AAMs) are generative, parametric models that have been successfully used i...
In this paper we provide the first, to the best of our knowledge, Bayesian formulation of one of the...
Active appearance model (AAM) is a powerful generative method for modeling deformable objects. The m...
The paper presents an extension of active appearance models (AAMs) that is better capable of dealing...
The proposed Active Orientation Models (AOMs) are gen- erative models of facial shape and appearance...
We demonstrate a fast, robust method of interpreting face images using an Active Appearance Model (A...
Parametric models of shape and texture such as Ac-tive Appearance Models (AAMs) are diverse tools fo...
Active appearance model (AAM), which makes ingenious use of both shape and texture constraints, is a...
The Active Appearance Model (AAM) algorithm has proved to be a successful method for matching stati...
Appearance variations result in many difficulties in face image analysis. To deal with this challeng...
International audienceAutomatic extraction of facial feature deformations (either due to identity ch...
A growing number of applications are starting to use face recognition as the initial step towards in...
generative models of facial shape and appearance, which extend the well-known paradigm of Active App...
This thesis presents a detailed and complete study of compositional gradient descent (CGD) algorithm...
In this paper we provide the first, to the best of our knowledge, Bayesian formulation of one of the...
Active Appearance Models (AAMs) are generative, parametric models that have been successfully used i...
In this paper we provide the first, to the best of our knowledge, Bayesian formulation of one of the...
Active appearance model (AAM) is a powerful generative method for modeling deformable objects. The m...
The paper presents an extension of active appearance models (AAMs) that is better capable of dealing...
The proposed Active Orientation Models (AOMs) are gen- erative models of facial shape and appearance...
We demonstrate a fast, robust method of interpreting face images using an Active Appearance Model (A...
Parametric models of shape and texture such as Ac-tive Appearance Models (AAMs) are diverse tools fo...
Active appearance model (AAM), which makes ingenious use of both shape and texture constraints, is a...
The Active Appearance Model (AAM) algorithm has proved to be a successful method for matching stati...
Appearance variations result in many difficulties in face image analysis. To deal with this challeng...
International audienceAutomatic extraction of facial feature deformations (either due to identity ch...
A growing number of applications are starting to use face recognition as the initial step towards in...
generative models of facial shape and appearance, which extend the well-known paradigm of Active App...
This thesis presents a detailed and complete study of compositional gradient descent (CGD) algorithm...
In this paper we provide the first, to the best of our knowledge, Bayesian formulation of one of the...
Active Appearance Models (AAMs) are generative, parametric models that have been successfully used i...
In this paper we provide the first, to the best of our knowledge, Bayesian formulation of one of the...
Active appearance model (AAM) is a powerful generative method for modeling deformable objects. The m...