A major goal for face recognition is to identify faces where the pose of the probe is different from the stored face. Typical feature vectors vary more with pose than with identity, leading to very poor recognition performance. We propose a non-linear many-to-one mapping from a conven-tional feature space to a new space constructed so that each individual has a unique feature vector regardless of pose. Training data is used to implicitly parameterize the position of the multi-dimensional face manifold by pose. We intro-duce a co-ordinate transform which depends on the position on the manifold. This transform is chosen so that different poses of the same face are mapped to the same feature vec-tor. The same approach is applied to illuminatio...
pose classification. Abstract: We present a robust front-end pose classification/estimation procedur...
In spite of over two decades of intense research, illumination and pose invariance remain prohibitiv...
As a problem of high practical appeal but outstanding challenges, computer-based face recognition re...
A major goal for face recognition is to identify faces where the pose of the probe is different from...
A major goal for face recognition is to identify faces where the pose of the probe is different from...
Abstract: Pose and illumination changings from picture to picture are two main barriers toward full ...
As a problem of high practical appeal but many outstanding challenges, computer-based face recogniti...
We present a novel approach to face recognition by constructing facial identity structures across vi...
Abstract. Pose and illumination changes from picture to picture are two main barriers toward full au...
Many natural image sets, depicting objects whose ap-pearance is changing due to motion, pose or ligh...
Face recognition algorithms perform very unreliably when the pose of the probe face is different fr...
Abstract—Face recognition algorithms perform very unreliably when the pose of the probe face is diff...
One approach to computer object recognition and modeling the brain’s ventral stream involves unsuper...
We propose a novel pose-invariant face recognition approach which we call Dis-criminant Multiple Cou...
This thesis considers the problem of recognizing human faces despite variations in illumination, pos...
pose classification. Abstract: We present a robust front-end pose classification/estimation procedur...
In spite of over two decades of intense research, illumination and pose invariance remain prohibitiv...
As a problem of high practical appeal but outstanding challenges, computer-based face recognition re...
A major goal for face recognition is to identify faces where the pose of the probe is different from...
A major goal for face recognition is to identify faces where the pose of the probe is different from...
Abstract: Pose and illumination changings from picture to picture are two main barriers toward full ...
As a problem of high practical appeal but many outstanding challenges, computer-based face recogniti...
We present a novel approach to face recognition by constructing facial identity structures across vi...
Abstract. Pose and illumination changes from picture to picture are two main barriers toward full au...
Many natural image sets, depicting objects whose ap-pearance is changing due to motion, pose or ligh...
Face recognition algorithms perform very unreliably when the pose of the probe face is different fr...
Abstract—Face recognition algorithms perform very unreliably when the pose of the probe face is diff...
One approach to computer object recognition and modeling the brain’s ventral stream involves unsuper...
We propose a novel pose-invariant face recognition approach which we call Dis-criminant Multiple Cou...
This thesis considers the problem of recognizing human faces despite variations in illumination, pos...
pose classification. Abstract: We present a robust front-end pose classification/estimation procedur...
In spite of over two decades of intense research, illumination and pose invariance remain prohibitiv...
As a problem of high practical appeal but outstanding challenges, computer-based face recognition re...