2013 | OriginalPaper | Buchkapitel
Generalized Mutual Subspace Based Methods for Image Set Classification
verfasst von : Takumi Kobayashi
Erschienen in: Computer Vision – ACCV 2012
Verlag: Springer Berlin Heidelberg
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The subspace-based methods are effectively applied to classify
sets
of feature vectors by modeling them as subspaces. It is, however, difficult to appropriately determine the subspace dimensionality in advance for better performance. For alleviating such issue, we present a generalized mutual subspace method by introducing
soft weighting
across the basis vectors of the subspace. The bases are effectively combined via the soft weights to measure the subspace similarities (angles) without definitely setting the subspace dimensionality. By using the soft weighting, we consequently propose a novel mutual subspace-based method to construct the discriminative space which renders more discriminative subspace similarities. In the experiments on 3D object recognition using image sets, the proposed methods exhibit stably favorable performances compared to the other subspace-based methods.