Journal article
Learning latent global network for Skeleton-based action prediction
IEEE Transactions on Image Processing, Vol.29, pp.959-970
2019
Abstract
Human actions represented with 3D skeleton sequences are robust to clustered backgrounds and illumination changes. In this paper, we investigate skeleton-based action prediction, which aims to recognize an action from a partial skeleton sequence that contains incomplete action information. We propose a new Latent Global Network based on adversarial learning for action prediction. We demonstrate that the proposed network provides latent long-term global information that is complementary to the local action information of the partial sequences and helps improve action prediction. We show that action prediction can be improved by combining the latent global information with the local action information. We test the proposed method on three challenging skeleton datasets and report state-of-the-art performance.
Details
- Title
- Learning latent global network for Skeleton-based action prediction
- Authors/Creators
- Q. Ke (Author/Creator)M. Bennamoun (Author/Creator)H. Rahmani (Author/Creator)S. An (Author/Creator)F. Sohel (Author/Creator)F. Boussaid (Author/Creator)
- Publication Details
- IEEE Transactions on Image Processing, Vol.29, pp.959-970
- Publisher
- IEEE
- Identifiers
- 991005544725007891
- Copyright
- © 2019 IEEE
- Murdoch Affiliation
- College of Science, Health, Engineering and Education
- Language
- English
- Resource Type
- Journal article
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- 4 Electrical Engineering, Electronics & Computer Science
- 4.116 Robotics
- 4.116.1097 Gesture Recognition
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