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ICPR
2008
IEEE

Dual clustering for categorization of action sequences

13 years 10 months ago
Dual clustering for categorization of action sequences
This paper proposes a novel algorithm for categorization of action video sequences using unsupervised dual clustering. Given a video database, we extract motion information of actions and perform nonlinear dimensionality reduction for addressing both the high dimensionality of silhouette features and non-linearity of articulated human actions. A k-means clustering is first performed on frame-wise features in the embedding space to convert each video in the database to a sequence of labels, each of which corresponds to one of k “key” feature frames. The dissimilarity between any two label sequences is then measured using edit distance. The resulting pairwise dissimilarity matrix is finally input to a spectral clustering algorithm to obtain the category labels of each action video. Experimental results on two recent data sets demonstrate the effectiveness and efficiency of the proposed algorithm.
Joanna Cheng, Liang Wang, Christopher Leckie
Added 30 May 2010
Updated 30 May 2010
Type Conference
Year 2008
Where ICPR
Authors Joanna Cheng, Liang Wang, Christopher Leckie
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