Abstract. In this report we address the problem of non-frontal face verification when only a frontal training image is available (e.g. a passport photograph) by augmenting a client’s frontal face model with artificially synthesized models for non-frontal views. In the framework of a Gaussian Mixture Model (GMM) based classifier, two techniques are proposed for the synthesis: UBMdiff and LinReg. Both techniques rely on a priori information and learn how face models for the frontal view are related to face models at a non-frontal view. The synthesis and augmentation approach is evaluated by applying it to two face verification systems: Principal Component Analysis (PCA) based and DCTmod2 [31] based; the two systems are a representation of hol...
Abstract: The search for robust features for face recognition in uncontrolled environ-ments is an im...
Motivated by the success of parts based representations in face detection we have attempted to addre...
It has been recently shown that local feature approaches to face verification are considerably more ...
In this report we address the problem of non-frontal face verification when only a frontal training ...
In this work we propose to address the problem of non-frontal face verification when only a frontal ...
We address the pose mismatch problem which can occur in face verification systems that have only a s...
Abstract: We address the pose mismatch problem which can occur in face verification systems that hav...
In the framework of a face Verification System using local feature and a Gaussian Mixture Model base...
In the framework of a {B}ayesian classifier based on mixtures of gaussians, we address the problem o...
Copyright © 2004 IEEEPerformance of face recognition systems can be adversely affected by mismatches...
Face recognition in real-world conditions requires the ability to deal with a number of conditions, ...
Face recognition in real-world conditions requires the ability to deal with a number of conditions, ...
We propose a low-complexity face synthesis technique which transforms a 2D frontal view image into v...
It has been shown previously that systems based on local features and relatively complex generative ...
In this paper, we propose a non-frontal model based approach which ensures that a face recognition s...
Abstract: The search for robust features for face recognition in uncontrolled environ-ments is an im...
Motivated by the success of parts based representations in face detection we have attempted to addre...
It has been recently shown that local feature approaches to face verification are considerably more ...
In this report we address the problem of non-frontal face verification when only a frontal training ...
In this work we propose to address the problem of non-frontal face verification when only a frontal ...
We address the pose mismatch problem which can occur in face verification systems that have only a s...
Abstract: We address the pose mismatch problem which can occur in face verification systems that hav...
In the framework of a face Verification System using local feature and a Gaussian Mixture Model base...
In the framework of a {B}ayesian classifier based on mixtures of gaussians, we address the problem o...
Copyright © 2004 IEEEPerformance of face recognition systems can be adversely affected by mismatches...
Face recognition in real-world conditions requires the ability to deal with a number of conditions, ...
Face recognition in real-world conditions requires the ability to deal with a number of conditions, ...
We propose a low-complexity face synthesis technique which transforms a 2D frontal view image into v...
It has been shown previously that systems based on local features and relatively complex generative ...
In this paper, we propose a non-frontal model based approach which ensures that a face recognition s...
Abstract: The search for robust features for face recognition in uncontrolled environ-ments is an im...
Motivated by the success of parts based representations in face detection we have attempted to addre...
It has been recently shown that local feature approaches to face verification are considerably more ...