Liu et al., 2006 - Google Patents
Multi-agent activity recognition using observation decomposedhidden markov modelsLiu et al., 2006
- Document ID
- 3535188216683165946
- Author
- Liu X
- Chua C
- Publication year
- Publication venue
- Image and vision computing
External Links
Snippet
To automatically recognize multi-agent activities is a highly challenging task due to the complexity of the interactions between agents. The difficulties in this task stem from two aspects: firstly, the feature vectors derived from input data are of large dimensionality and …
- 230000000694 effects 0 title abstract description 129
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