In this paper we introduce a new dataset and pose invariant sampling method and describe the ensemble methods used for recognizing faces in 3D scenes, captured using commodity depth sensors. We use the 3D SIFT key point detector to take advantage of the similarities between faces, which leads to a set of points of interest based on the curvature of the face. For all key points, features are extracted using a 3D feature descriptor. Then, a variable-sized amount of features are generated per each 3D face image. The first ensemble method we constructed uses a K-nearest neighbors classifier to classify each key point-sampled feature vector as belonging to one of the subjects recorded in our dataset. All votes over all key points are combined. I...
AbstractIn this work, we propose and experiment an original solution to 3D face recognition that sup...
As the technology for 3D photography has developed rapidly in recent years, an enormous amount of 3...
In this chapter, we propose an ensemble of face detectors for maximizing the number of true positive...
In this paper we introduce a new dataset and pose invariant sampling method and describe the ensembl...
The human brain is inherently hardwired to read psychological state before identity, hence its robus...
3D face recognition is attracting more attention due to the recent development in 3D facial data acq...
In this work, we propose to exploit depth information to build a pose-invariant face recognition alg...
International audienceRegistration algorithms performed on point clouds or range images of face scan...
A new approach to face verification from 3D data is presented. The method uses 3D registration techn...
<p>In recent years, face recognition has advanced with incredible speed thanks to the advent of deep...
open3siA fundamental problem in computer vision is face detection. In this paper, an experimentally ...
We present a method for real-time 3D face localization and verification using a consumer-grade depth...
Robust unconstrained real-time face recognition still remains a challenge today. The recent addition...
Abstract3D Face recognition has been an area of interest for the past few decades in pattern recogni...
We present an algorithm that uses a low resolution 3D sensor for robust face recognition under chall...
AbstractIn this work, we propose and experiment an original solution to 3D face recognition that sup...
As the technology for 3D photography has developed rapidly in recent years, an enormous amount of 3...
In this chapter, we propose an ensemble of face detectors for maximizing the number of true positive...
In this paper we introduce a new dataset and pose invariant sampling method and describe the ensembl...
The human brain is inherently hardwired to read psychological state before identity, hence its robus...
3D face recognition is attracting more attention due to the recent development in 3D facial data acq...
In this work, we propose to exploit depth information to build a pose-invariant face recognition alg...
International audienceRegistration algorithms performed on point clouds or range images of face scan...
A new approach to face verification from 3D data is presented. The method uses 3D registration techn...
<p>In recent years, face recognition has advanced with incredible speed thanks to the advent of deep...
open3siA fundamental problem in computer vision is face detection. In this paper, an experimentally ...
We present a method for real-time 3D face localization and verification using a consumer-grade depth...
Robust unconstrained real-time face recognition still remains a challenge today. The recent addition...
Abstract3D Face recognition has been an area of interest for the past few decades in pattern recogni...
We present an algorithm that uses a low resolution 3D sensor for robust face recognition under chall...
AbstractIn this work, we propose and experiment an original solution to 3D face recognition that sup...
As the technology for 3D photography has developed rapidly in recent years, an enormous amount of 3...
In this chapter, we propose an ensemble of face detectors for maximizing the number of true positive...