Face recognition has made significant advances in the last decade, but robust commercial applications are still lacking. Current authentication/identification applications are limited to controlled settings, e.g., limited pose and illumination changes, with the user usually aware of being screened and collaborating in the process. Among others, pose and illumination changes are limited. To address challenges from looser restrictions, this paper proposes a novel framework for real-world face recognition in uncontrolled settings named Face Analysis for Commercial Entities (FACE). Its robustness comes from normalization (“correction”) strategies to address pose and illumination variations. In addition, two separate image quality indices quanti...
We present a theory for constructing linear, black box approximations to face recognition algorithms...
none3In this paper the problem of finding a face recognition system that works well both under varia...
We present a theory for constructing linear, black box approximations to face recognition algorithms...
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...
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...
In this paper we describe FACE (Face Analysis for Commercial Entities), a framework for face recogni...
Achieving illumination invariance in the presence of large pose changes remains one of the most chal...
Abstract- Events, such as major attacks, exposed weakness in most sophisticated security systems. Va...
ABSTRACT: Face Recognition is generating enormous interest due to government concerns about identity...
Accurate face recognition is critical for many security applications. Current automatic face-recogni...
Image-based face recognition has attained wide applications during the past decades in commerce and ...
We present a theory for constructing linear, black box approximations to face recognition algorithms...
none3In this paper the problem of finding a face recognition system that works well both under varia...
We present a theory for constructing linear, black box approximations to face recognition algorithms...
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...
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...
In this paper we describe FACE (Face Analysis for Commercial Entities), a framework for face recogni...
Achieving illumination invariance in the presence of large pose changes remains one of the most chal...
Abstract- Events, such as major attacks, exposed weakness in most sophisticated security systems. Va...
ABSTRACT: Face Recognition is generating enormous interest due to government concerns about identity...
Accurate face recognition is critical for many security applications. Current automatic face-recogni...
Image-based face recognition has attained wide applications during the past decades in commerce and ...
We present a theory for constructing linear, black box approximations to face recognition algorithms...
none3In this paper the problem of finding a face recognition system that works well both under varia...
We present a theory for constructing linear, black box approximations to face recognition algorithms...