Action recognition has received increasing attention during the last decade. Various approaches have been proposed to encode the videos that contain actions, among which selfsimilarity matrices (SSMs) have shown very good performance by encoding the dynamics of the video. However, SSMs become sensitive when there is a very large view change. In this paper, we tackle the multiview action recognition problem by proposing a sparse code filtering (SCF) framework which can mine the action patterns. First, a classwise sparse coding method is proposed to make the sparse codes of the betweenclass data lie close by. Then we integrate the classifiers and the classwise sparse coding process into a collaborative filtering (CF) framework to mine the discriminative sparse codes and classifiers jointly. The experimental results on several public multiview action recognition datasets demonstrate that the presented SCF framework outperforms other stateoftheart methods.

Sparse code filtering for action pattern mining / Wang, Wei; Yan, Yan; Nie, Liqiang; Zhang, Luming; Winkler, Stefan; Sebe, Nicu. - 10112:(2017), pp. 3-18. ( 13th Asian Conference on Computer Vision, ACCV 2016 Taipei 2016) [10.1007/978-3-319-541846_1].

Sparse code filtering for action pattern mining

Wang, Wei;Yan, Yan;Sebe, Nicu
2017-01-01

Abstract

Action recognition has received increasing attention during the last decade. Various approaches have been proposed to encode the videos that contain actions, among which selfsimilarity matrices (SSMs) have shown very good performance by encoding the dynamics of the video. However, SSMs become sensitive when there is a very large view change. In this paper, we tackle the multiview action recognition problem by proposing a sparse code filtering (SCF) framework which can mine the action patterns. First, a classwise sparse coding method is proposed to make the sparse codes of the betweenclass data lie close by. Then we integrate the classifiers and the classwise sparse coding process into a collaborative filtering (CF) framework to mine the discriminative sparse codes and classifiers jointly. The experimental results on several public multiview action recognition datasets demonstrate that the presented SCF framework outperforms other stateoftheart methods.
2017
13th Asian Conference on Computer Vision, ACCV 2016;
Heidelberg
Springer Verlag
9783319541839
Wang, Wei; Yan, Yan; Nie, Liqiang; Zhang, Luming; Winkler, Stefan; Sebe, Nicu
Sparse code filtering for action pattern mining / Wang, Wei; Yan, Yan; Nie, Liqiang; Zhang, Luming; Winkler, Stefan; Sebe, Nicu. - 10112:(2017), pp. 3-18. ( 13th Asian Conference on Computer Vision, ACCV 2016 Taipei 2016) [10.1007/978-3-319-541846_1].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/193392
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