Multilinear Principal Component Analysis Network for Tensor Object Classification
This work addresses tensor object classification for visual content analysis, but it is incremental as it extends an existing method.
The authors tackled tensor object classification by developing a tensorial extension of PCANet called MPCANet, which achieved higher classification accuracy than PCANet on datasets like UCF sports action video sequences and UCF11.
The recently proposed principal component analysis network (PCANet) has been proved high performance for visual content classification. In this letter, we develop a tensorial extension of PCANet, namely, multilinear principal analysis component network (MPCANet), for tensor object classification. Compared to PCANet, the proposed MPCANet uses the spatial structure and the relationship between each dimension of tensor objects much more efficiently. Experiments were conducted on different visual content datasets including UCF sports action video sequences database and UCF11 database. The experimental results have revealed that the proposed MPCANet achieves higher classification accuracy than PCANet for tensor object classification.