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Article Dans Une Revue IEEE Access Année : 2017

Multilinear Principal Component Analysis Network for Tensor Object Classification

Résumé

The recently proposed principal component analysis network (PCANet) has performed well with respect to the classification of 2-D images. However, feature extraction may perform less well when dealing with multi-dimensional images, since the spatial relationships within the structures of the images are not fully utilized. In this paper, we develop a multilinear principal component analysis network (MPCANet), which is a tensor extension of PCANet, to extract the high-level semantic features from multi-dimensional images. The extracted features largely minimize the intraclass invariance of tensor objects by making efficient use of spatial relationships within multi-dimensional images. The proposed MPCANet outperforms traditional methods on a benchmark composed of three data sets, including the UCF sports action database, the UCF11 database, and a medical image database. It is shown that even a simple one-layer MPCANet may outperform a two-layer PCANet. © 2017 IEEE.

Dates et versions

hal-01618929 , version 1 (18-10-2017)

Identifiants

Citer

J. Wu, S. Qiu, R. Zeng, Y. Kong, Lotfi Senhadji, et al.. Multilinear Principal Component Analysis Network for Tensor Object Classification. IEEE Access, 2017, 5, pp.3322-3331. ⟨10.1109/ACCESS.2017.2675478⟩. ⟨hal-01618929⟩
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