Title :
Effective fusing the factored matrices in dual tensors for action recognition
Author :
Chung-Yang Hsieh ; Wei-Yang Lin
Author_Institution :
Nat. Chung Cheng Univ., Chiayi, Taiwan
Abstract :
In statistics, Canonical Correlation Analysis (CCA) is a kind of method to effectively analyze the correlation between two data. In recent years, some methods reported in literatures treated the action video sequences as the tensors, and calculated the similarity between two video sequences using CCA. Each of these tensors was unfolded into several matrices or vectors in the previous works. And estimated the similarity between two tensors via accumulating the canonical correlations on all of the pairs of the unfolded matrices or vectors. In this paper, we treat each of the unfolded matrices in a tensor as an individual, instead of accumulating the canonical correlations in a whole tensor, such that we can effectively use the characteristic of each unfolded matrix. We also propose an information fusion method to combine the similarities of each of the unfolded matrices between two tensors. Furthermore, we add the Histogram of Oriented Gradients (HOG) features to complement the tensor generated by the pure video sequence. Our method is validated on the UCF sports database, and the experimental result shows that the proposed method can compete with the state-of-the-art methods.
Keywords :
feature extraction; image fusion; image sequences; matrix algebra; object recognition; statistical analysis; tensors; video signal processing; CCA; UCF sports database; action recognition; action video sequences; canonical correlation analysis; dual tensors; factored matrices; histogram-of-oriented gradients features; information fusion method; unfolded matrices; unfolded vectors; Computer vision; Correlation; Databases; Feature extraction; Pattern recognition; Tensile stress; Video sequences;
Conference_Titel :
Machine Vision Applications (MVA), 2015 14th IAPR International Conference on
Conference_Location :
Tokyo
DOI :
10.1109/MVA.2015.7153210