DocumentCode
70156
Title
Learning Spatial and Temporal Extents of Human Actions for Action Detection
Author
Zhong Zhou ; Feng Shi ; Wei Wu
Author_Institution
State Key Lab. of Virtual Reality Technol. & Syst., Beihang Univ., Beijing, China
Volume
17
Issue
4
fYear
2015
fDate
Apr-15
Firstpage
512
Lastpage
525
Abstract
For the problem of action detection, most existing methods require that relevant portions of the action of interest in training videos have been manually annotated with bounding boxes. Some recent works tried to avoid tedious manual annotation , and proposed to automatically identify the relevant portions in training videos. However, these methods only concerned the identification in either spatial or temporal domain, and may get irrelevant contents from another domain. These irrelevant contents are usually undesirable in the training phase, which will lead to a degradation of the detection performance. This paper advances prior work by proposing a joint learning framework to simultaneously identify the spatial and temporal extents of the action of interest in training videos. To get pixel-level localization results, our method uses dense trajectories extracted from videos as local features to represent actions. We first present a trajectory split-and-merge algorithm to segment a video into the background and several separated foreground moving objects. In this algorithm, the inherent temporal smoothness of human actions is exploited to facilitate segmentation. Then, with the latent SVM framework on segmentation results, spatial and temporal extents of the action of interest are treated as latent variables that are inferred simultaneously with action recognition. Experiments on two challenging datasets show that action detection with our learned spatial and temporal extents is superior than state-of-the-art methods.
Keywords
feature extraction; image representation; image segmentation; object detection; spatiotemporal phenomena; support vector machines; video signal processing; action detection; feature extraction; foreground moving object separation; human actions; joint learning framework; latent SVM framework; pixel-level localization; spatial extent learning; temporal extent learning; training videos; trajectory split-and-merge algorithm; Discrete cosine transforms; Feature extraction; Partitioning algorithms; Support vector machines; Training; Trajectory; Videos; Action localization; action recognition; discriminative latent variable model; split-and-merge;
fLanguage
English
Journal_Title
Multimedia, IEEE Transactions on
Publisher
ieee
ISSN
1520-9210
Type
jour
DOI
10.1109/TMM.2015.2404779
Filename
7044590
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