Accurate face recognition is critical for many security applications. Current automatic face-recognition systems are defeated by natural changes in lighting and pose, which often affect face images more profoundly than changes in identity. The only system that can reliably cope with such variability is a human observer who is familiar with the faces concerned. We modeled human familiarity by using image averaging to derive stable face representations from naturally varying photographs. This simple procedure increased the accuracy of an industry standard face-recognition algorithm from 54% to 100%, bringing the robust performance of a familiar human to an automated system
Though face recognition gained significant attention and credibility in the last decade, quite few c...
Though face recognition gained significant attention and credibility in the last decade, quite few c...
Though face recognition gained significant attention and credibility in the last decade, quite few c...
National security and crime prevention of-ten depend on our ability to establish theidentities of in...
Photographs are often used to establish the identity of an individual or to verify that they are who...
We are able to recognise familiar faces easily across large variations in image quality, though our ...
We compared face identification by humans and machines using images taken under a variety of uncontr...
Face recognition has made significant advances in the last decade, but robust commercial application...
Face recognition has made significant advances in the last decade, but robust commercial application...
Face recognition has made significant advances in the last decade, but robust commercial application...
Face recognition has made significant advances in the last decade, but robust commercial application...
A key concern in Automatic Face Recognition (AFR) is the decrease of recognition performance as the ...
Average faces have been used frequently in face recognition studies, either as a theoretical concept...
Our recognition of familiar faces is excellent, and generalises across viewing conditions. However, ...
A working face recognition system requires the ability to represent facial images in such a way that...
Though face recognition gained significant attention and credibility in the last decade, quite few c...
Though face recognition gained significant attention and credibility in the last decade, quite few c...
Though face recognition gained significant attention and credibility in the last decade, quite few c...
National security and crime prevention of-ten depend on our ability to establish theidentities of in...
Photographs are often used to establish the identity of an individual or to verify that they are who...
We are able to recognise familiar faces easily across large variations in image quality, though our ...
We compared face identification by humans and machines using images taken under a variety of uncontr...
Face recognition has made significant advances in the last decade, but robust commercial application...
Face recognition has made significant advances in the last decade, but robust commercial application...
Face recognition has made significant advances in the last decade, but robust commercial application...
Face recognition has made significant advances in the last decade, but robust commercial application...
A key concern in Automatic Face Recognition (AFR) is the decrease of recognition performance as the ...
Average faces have been used frequently in face recognition studies, either as a theoretical concept...
Our recognition of familiar faces is excellent, and generalises across viewing conditions. However, ...
A working face recognition system requires the ability to represent facial images in such a way that...
Though face recognition gained significant attention and credibility in the last decade, quite few c...
Though face recognition gained significant attention and credibility in the last decade, quite few c...
Though face recognition gained significant attention and credibility in the last decade, quite few c...