发明名称 CLASSIFICATION VIA SEMI-RIEMANNIAN SPACES
摘要 Described is using semi-Riemannian geometry in supervised learning to learn a discriminant subspace for classification, e.g., labeled samples are used to learn the geometry of a semi-Riemannian submanifold. For a given sample, the K nearest classes of that sample are determined, along with the nearest samples that are in other classes, and the nearest samples in that sample's same class. The distances between these samples are computed, and used in computing a metric matrix. The metric matrix is used to compute a projection matrix that corresponds to the discriminant subspace. In online classification, as a new sample is received, it is projected into a feature space by use of the projection matrix and classified accordingly.
申请公布号 US2010080450(A1) 申请公布日期 2010.04.01
申请号 US20080242421 申请日期 2008.09.30
申请人 MICROSOFT CORPORATION 发明人 ZHAO DELI;LIN ZHOUCHEN;TANG XIAOOU
分类号 G06K9/62 主分类号 G06K9/62
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