Short Papers
Multi-View Discriminant Analysis
Meina Kan, Shiguang Shan, Senior Member, IEEE,
Haihong Zhang, Shihong Lao, and
Xilin Chen, Senior Member, IEEE
Abstract—In many computer vision systems, the same object can be observed at
varying viewpoints or even by different sensors, which brings in the challenging
demand for recognizing objects from distinct even heterogeneous views. In this
work we propose a Multi-view Discriminant Analysis (MvDA) approach, which
seeks for a single discriminant common space for multiple views in a non-pairwise
manner by jointly learning multiple view-specific linear transforms. Specifically, our
MvDA is formulated to jointly solve the multiple linear transforms by optimizing a
generalized Rayleigh quotient, i.e., maximizing the between-class variations and
minimizing the within-class variations from both intra-view and inter-view in the
common space. By reformulating this problem as a ratio trace problem, the
multiple linear transforms a
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