This paper addresses the problem of 3D face recognition using simultaneous sparse approximations on the sphere. The 3D face point clouds are first aligned with a novel and fully automated registration process. They are then represented as signals on the 2D sphere in order to preserve depth and geometry information. Next, we implement a dimensionality reduction process with simultaneous sparse approximations and subspace projection. It permits to represent each 3D face by only a few spherical functions that are able to capture the salient facial characteristics, and hence to preserve the discriminant facial information. We eventually perform recognition by effective matching in the reduced space, where Linear Discriminant Analysis can be fur...
Recent years have witnessed a growing interest in developing methods for 3D face recognition. Howeve...
We introduce novel subspace-based methods for learning from the azimuth angle of surface normals for...
We consider the problem of generating either pairwise-aligned or pose-normalised depth maps from noi...
We present a face recognition method based on sparse representation for recognizing 3D face meshes u...
The increasing availability of 3D facial data offers the potential to overcome the difficulties inhe...
International audienceThis paper proposes a novel approach for 3D face recognition by learning weigh...
International audienceWe propose and evaluate a three-dimensional (3D) face recognition approach tha...
International audienceIn recent years, 3D face recognition has been considered as a major solution t...
Biometrics axe unique to each individual and are therefore valuable for identification purposes. One...
International audienceRegistration algorithms performed on point clouds or range images of face scan...
We present a systematic procedure for selecting facial fiducial points associated with diverse struc...
Face recognition research using automatic or semi-automatic techniques has emerged over the last two...
Abstract: Dimensionality reduction methods (DRs) have commonly been used as a principled way to unde...
This work proposes solutions for two different scenarios in face recognition and verification. The f...
Face recognition research using automatic or semi-automatic techniques has emerged over the last two...
Recent years have witnessed a growing interest in developing methods for 3D face recognition. Howeve...
We introduce novel subspace-based methods for learning from the azimuth angle of surface normals for...
We consider the problem of generating either pairwise-aligned or pose-normalised depth maps from noi...
We present a face recognition method based on sparse representation for recognizing 3D face meshes u...
The increasing availability of 3D facial data offers the potential to overcome the difficulties inhe...
International audienceThis paper proposes a novel approach for 3D face recognition by learning weigh...
International audienceWe propose and evaluate a three-dimensional (3D) face recognition approach tha...
International audienceIn recent years, 3D face recognition has been considered as a major solution t...
Biometrics axe unique to each individual and are therefore valuable for identification purposes. One...
International audienceRegistration algorithms performed on point clouds or range images of face scan...
We present a systematic procedure for selecting facial fiducial points associated with diverse struc...
Face recognition research using automatic or semi-automatic techniques has emerged over the last two...
Abstract: Dimensionality reduction methods (DRs) have commonly been used as a principled way to unde...
This work proposes solutions for two different scenarios in face recognition and verification. The f...
Face recognition research using automatic or semi-automatic techniques has emerged over the last two...
Recent years have witnessed a growing interest in developing methods for 3D face recognition. Howeve...
We introduce novel subspace-based methods for learning from the azimuth angle of surface normals for...
We consider the problem of generating either pairwise-aligned or pose-normalised depth maps from noi...