The presence of occlusions in facial images is inevitable in unconstrained scenarios. However recognizing occluded faces remains a partially solved problem in computer vision. In this contribution we propose a novel Bayesian technique inspired by psychophysical mechanisms relevant to face recognition to address the facial occlusion problem. For some individuals certain facial regions, e.g. features comprising of some of the upper face, might be more discriminative than the rest of the features in the face. For others, it might be the features over the mid face and some of the lower face that are important. The proposed approach in this paper, will allow for such a psychophysical analysis to be factored into the recognition process. We have ...
We propose a novel technique for direct visual matching of images for the purposes of face recogniti...
Despite the success obtained in face detection and recognition over the last ten years of research, ...
Abstract When using convolutional neural network (CNN) models to extract features of an occluded fac...
Face recognition systems robust to major occlusions have wide applications ranging from consumer pro...
In the field of computer vision, developing automated systems to recognize people under unconstraine...
In previous work [6, 9,10], we advanced a new technique for direct visual matching of images for the...
This thesis considers the problem of recognizing human faces despite variations in illumination, pos...
In previous work [6, 9, 10], we advanced a new technique for direct visual matching of images for th...
Identifying humans under partial occlusion is a challenging problem in unconstrained scene understan...
While there has been an enormous amount of research on face recognition under pose/illumination/expr...
This dissertation studied the problem of face recognition when facial images have partial occlusions...
With rapid technological advances, robust facial recognition systems have become necessary to streng...
Despite the recent success of convolutional neural networks for computer vision applications, uncons...
Abstract The limited capacity to recognise faces under occlusions is a long‐standing problem that pr...
Abstract — Recognition in uncontrolled situations is one of the most important bottlenecks for pract...
We propose a novel technique for direct visual matching of images for the purposes of face recogniti...
Despite the success obtained in face detection and recognition over the last ten years of research, ...
Abstract When using convolutional neural network (CNN) models to extract features of an occluded fac...
Face recognition systems robust to major occlusions have wide applications ranging from consumer pro...
In the field of computer vision, developing automated systems to recognize people under unconstraine...
In previous work [6, 9,10], we advanced a new technique for direct visual matching of images for the...
This thesis considers the problem of recognizing human faces despite variations in illumination, pos...
In previous work [6, 9, 10], we advanced a new technique for direct visual matching of images for th...
Identifying humans under partial occlusion is a challenging problem in unconstrained scene understan...
While there has been an enormous amount of research on face recognition under pose/illumination/expr...
This dissertation studied the problem of face recognition when facial images have partial occlusions...
With rapid technological advances, robust facial recognition systems have become necessary to streng...
Despite the recent success of convolutional neural networks for computer vision applications, uncons...
Abstract The limited capacity to recognise faces under occlusions is a long‐standing problem that pr...
Abstract — Recognition in uncontrolled situations is one of the most important bottlenecks for pract...
We propose a novel technique for direct visual matching of images for the purposes of face recogniti...
Despite the success obtained in face detection and recognition over the last ten years of research, ...
Abstract When using convolutional neural network (CNN) models to extract features of an occluded fac...