© 2017 Elsevier Ltd We present a multilinear algorithm to automatically establish dense point-to-point correspondence over an arbitrarily large number of population specific 3D faces across identities, facial expressions and poses. The algorithm is initialized with a subset of anthropometric landmarks detected by our proposed Deep Landmark Identification Network which is trained on synthetic images. The landmarks are used to segment the 3D face into Voronoi regions by evolving geodesic level set curves. Exploiting the intrinsic features of these regions, we extract discriminative keypoints on the facial manifold to elastically match the regions across faces for establishing dense correspondence. Finally, we generate a Region based 3D Defor...
Abstract — Automatic localization of 3D facial features is im-portant for face recognition, tracking...
This paper investigates how far a very deep neural network is from attaining close to saturating per...
International audienceThis paper presents a mesh-based approach for 3D face recognition using a nove...
We present an algorithm that automatically establishes dense correspondences between a large number ...
Abstract The availability of 3D facial datasets is rapidly growing, mainly as a result of medical an...
The 3D Morphable Model (3DMM) is a powerful statistical tool for representing 3D face shapes. To bui...
This paper presents an improved method to construct dense correspondences for 3D facial analysis, wh...
This paper addresses the problem of facial landmark lo-calization and tracking from a single camera....
The incorporation of 3D data in facial analysis tasks has gained popularity in recent years. Though ...
Automatic localization of 3D facial features is important for face recognition, tracking, modeling ...
We consider the problem of computing accurate point-to-point correspondences among a set of human fa...
International audience3D face landmarking aims at automatic localization of 3D facial features and h...
We present large scale facial model (LSFM)—a 3D Morphable Model (3DMM) automatically constructed fro...
Face analysis from 2D images and videos is a central task in many multimedia applications. Methods d...
Abstract—A 3D landmark detection method for 3D facial scans is presented and thoroughly evaluated. T...
Abstract — Automatic localization of 3D facial features is im-portant for face recognition, tracking...
This paper investigates how far a very deep neural network is from attaining close to saturating per...
International audienceThis paper presents a mesh-based approach for 3D face recognition using a nove...
We present an algorithm that automatically establishes dense correspondences between a large number ...
Abstract The availability of 3D facial datasets is rapidly growing, mainly as a result of medical an...
The 3D Morphable Model (3DMM) is a powerful statistical tool for representing 3D face shapes. To bui...
This paper presents an improved method to construct dense correspondences for 3D facial analysis, wh...
This paper addresses the problem of facial landmark lo-calization and tracking from a single camera....
The incorporation of 3D data in facial analysis tasks has gained popularity in recent years. Though ...
Automatic localization of 3D facial features is important for face recognition, tracking, modeling ...
We consider the problem of computing accurate point-to-point correspondences among a set of human fa...
International audience3D face landmarking aims at automatic localization of 3D facial features and h...
We present large scale facial model (LSFM)—a 3D Morphable Model (3DMM) automatically constructed fro...
Face analysis from 2D images and videos is a central task in many multimedia applications. Methods d...
Abstract—A 3D landmark detection method for 3D facial scans is presented and thoroughly evaluated. T...
Abstract — Automatic localization of 3D facial features is im-portant for face recognition, tracking...
This paper investigates how far a very deep neural network is from attaining close to saturating per...
International audienceThis paper presents a mesh-based approach for 3D face recognition using a nove...