Invention Grant
- Patent Title: Face recognition using discriminatively trained orthogonal tensor projections
- Patent Title (中): 使用区分训练正交张量投影的人脸识别
-
Application No.: US11763909Application Date: 2007-06-15
-
Publication No.: US07936906B2Publication Date: 2011-05-03
- Inventor: Gang Hua , Paul A Viola , Steven M. Drucker , Michael Revow
- Applicant: Gang Hua , Paul A Viola , Steven M. Drucker , Michael Revow
- Applicant Address: US WA Redmond
- Assignee: Microsoft Corporation
- Current Assignee: Microsoft Corporation
- Current Assignee Address: US WA Redmond
- Agency: Lee & Hayes, PLLC
- Main IPC: G06K9/00
- IPC: G06K9/00

Abstract:
Systems and methods are described for face recognition using discriminatively trained orthogonal rank one tensor projections. In an exemplary system, images are treated as tensors, rather than as conventional vectors of pixels. During runtime, the system designs visual features—embodied as tensor projections—that minimize intraclass differences between instances of the same face while maximizing interclass differences between the face and faces of different people. Tensor projections are pursued sequentially over a training set of images and take the form of a rank one tensor, i.e., the outer product of a set of vectors. An exemplary technique ensures that the tensor projections are orthogonal to one another, thereby increasing ability to generalize and discriminate image features over conventional techniques. Orthogonality among tensor projections is maintained by iteratively solving an ortho-constrained eigenvalue problem in one dimension of a tensor while solving unconstrained eigenvalue problems in additional dimensions of the tensor.
Public/Granted literature
- US20080310687A1 Face Recognition Using Discriminatively Trained Orthogonal Tensor Projections Public/Granted day:2008-12-18
Information query