Image analysis – Pattern recognition – Classification
Reexamination Certificate
2004-09-02
2008-08-12
Wu, Jingge (Department: 2624)
Image analysis
Pattern recognition
Classification
C382S225000, C382S190000, C382S168000
Reexamination Certificate
active
07412098
ABSTRACT:
A method represents a class of objects. A set of samples for the objects in the class is acquired, there being one sample for each object, and each sample includes a plurality of data values representing characteristics of the object. The samples are grouped into subsets such that each subset intersects at least one other subset. For each subset, a low-dimensional parameterization is determined. Nullspaces of the low-dimensional parameterizations are averaged to obtain a matrix whose nullspace contains a low-dimensional representation of the class of objects.
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Brinkman Dirk
Chou Yeu-Tzer
Mitsubishi Electric Research Laboratories Inc.
Mueller Clifton D.
Vinokur Gene V.
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