Abstract — Many desirable applications dealing with auto-matic face analysis rely on robust facial feature localization. While extensive research has been carried out on standard 2D imagery, recent technological advances made the acquisition of 3D data both accurate and affordable, opening new ways to more accurate and robust algorithms. We present a model-based approach to real time face alignment, fitting a 3D model to depth and intensity images of unseen expressive faces. We use random regression forests to drive the fitting in an Active Appearance Model framework. We thoroughly evaluated the proposed approach on publicly available datasets and show how adding the depth channel boosts the robustness and accuracy of the algorithm. I
International audienceMost existing pose-independent Face Recognition (FR) tech- niques take advanta...
International audienceMost existing pose-independent Face Recognition (FR) tech- niques take advanta...
Although facial feature detection from 2D images is a well-studied field, there is a lack of real-ti...
Many desirable applications dealing with automatic face analysis rely on robust facial feature local...
We present a random forest-based framework for real time head pose estimation from depth images and ...
and Active Appearance Model (AAM) based approaches have achieved some success, however, evidence sug...
Active Appearance Models (AAMs) are able to align efficiently known faces under duress, when face p...
AbstractActive Appearance Model (AAM) is an algorithm for fitting a generative model of object shape...
generative models of facial shape and appearance, which extend the well-known paradigm of Active App...
In this paper, we present several improvements on the conventional Active Shape Models (ASM) for fac...
We propose a 3D Constrained Local Model framework for de-formable face alignment in depth image. Our...
Face alignment has been well studied in recent years, however, when a face alignment model is applie...
We demonstrate a fast, robust method of interpreting face images using an Active Appearance Model (A...
Over the past decades, face alignment, a process of localising semantic facial landmarks such as eye...
This paper presents a fully automatic system that recovers 3D face models from sequences of facial i...
International audienceMost existing pose-independent Face Recognition (FR) tech- niques take advanta...
International audienceMost existing pose-independent Face Recognition (FR) tech- niques take advanta...
Although facial feature detection from 2D images is a well-studied field, there is a lack of real-ti...
Many desirable applications dealing with automatic face analysis rely on robust facial feature local...
We present a random forest-based framework for real time head pose estimation from depth images and ...
and Active Appearance Model (AAM) based approaches have achieved some success, however, evidence sug...
Active Appearance Models (AAMs) are able to align efficiently known faces under duress, when face p...
AbstractActive Appearance Model (AAM) is an algorithm for fitting a generative model of object shape...
generative models of facial shape and appearance, which extend the well-known paradigm of Active App...
In this paper, we present several improvements on the conventional Active Shape Models (ASM) for fac...
We propose a 3D Constrained Local Model framework for de-formable face alignment in depth image. Our...
Face alignment has been well studied in recent years, however, when a face alignment model is applie...
We demonstrate a fast, robust method of interpreting face images using an Active Appearance Model (A...
Over the past decades, face alignment, a process of localising semantic facial landmarks such as eye...
This paper presents a fully automatic system that recovers 3D face models from sequences of facial i...
International audienceMost existing pose-independent Face Recognition (FR) tech- niques take advanta...
International audienceMost existing pose-independent Face Recognition (FR) tech- niques take advanta...
Although facial feature detection from 2D images is a well-studied field, there is a lack of real-ti...