Face recognition, although being a popular area of research for over a decade has still many open research challenges. Some of these challenges include the recognition of poorly illuminated faces, recognition under pose variations and also the challenge of capturing sufficient training data to enable recognition under pose/viewpoint changes. With the appearance of cheap and effective multimodal image capture hardware, such as the Microsoft Kinect device, new possibilities of research have been uncovered. One opportunity is to explore the potential use of the depth maps generated by the Kinect as an additional data source to recognize human faces under...
The ability to reliantly identify people is an ever growing desire. 3D imaging devices provide major...
This work proposes solutions for two different scenarios in face recognition and verification. The f...
In this paper, we present a new algorithm that utilizes low-quality red, green, blue and depth (RGB-...
Face recognition, although being a popular area of research and study, still has many challenges, an...
Recent years witnessed the breakthrough of face recognition with deep convolutional neural networks....
One of the most important advantages of automatic human face recognition is its nonintrusiveness pro...
Face recognition in unconstrained environments is still a challenge, because of the many variations ...
Face recognition is a specific case of object recognition. It has received special attention in the ...
Nowadays, we are witnessing the wide diffusion of active depth sensors. However, their different bui...
Automatic face recognition is a research area with high popularity. Many different face recognition ...
A depth-based face recognition algorithm specially adapted to high range resolution data acquired by...
Face recognition technology is spreading into a wide range of applications. This is mainly driven by...
Depth information based face recognition deals with reorganisation of a person by using its depth. I...
Robust unconstrained real-time face recognition still remains a challenge today. The recent addition...
Face detection, registration, and recognition have become a fascinating field for researchers. The m...
The ability to reliantly identify people is an ever growing desire. 3D imaging devices provide major...
This work proposes solutions for two different scenarios in face recognition and verification. The f...
In this paper, we present a new algorithm that utilizes low-quality red, green, blue and depth (RGB-...
Face recognition, although being a popular area of research and study, still has many challenges, an...
Recent years witnessed the breakthrough of face recognition with deep convolutional neural networks....
One of the most important advantages of automatic human face recognition is its nonintrusiveness pro...
Face recognition in unconstrained environments is still a challenge, because of the many variations ...
Face recognition is a specific case of object recognition. It has received special attention in the ...
Nowadays, we are witnessing the wide diffusion of active depth sensors. However, their different bui...
Automatic face recognition is a research area with high popularity. Many different face recognition ...
A depth-based face recognition algorithm specially adapted to high range resolution data acquired by...
Face recognition technology is spreading into a wide range of applications. This is mainly driven by...
Depth information based face recognition deals with reorganisation of a person by using its depth. I...
Robust unconstrained real-time face recognition still remains a challenge today. The recent addition...
Face detection, registration, and recognition have become a fascinating field for researchers. The m...
The ability to reliantly identify people is an ever growing desire. 3D imaging devices provide major...
This work proposes solutions for two different scenarios in face recognition and verification. The f...
In this paper, we present a new algorithm that utilizes low-quality red, green, blue and depth (RGB-...