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Spatio-Temporal Covariance Descriptors for Action and Gesture Recognition
Sanin Andres Sanderson Conrad Harandi Mehrtash T. Lovell Brian C.

Abstract
We propose a new action and gesture recognition method based onspatio-temporal covariance descriptors and a weighted Riemannian localitypreserving projection approach that takes into account the curved space formedby the descriptors. The weighted projection is then exploited during boostingto create a final multiclass classification algorithm that employs the mostuseful spatio-temporal regions. We also show how the descriptors can becomputed quickly through the use of integral video representations. Experimentson the UCF sport, CK+ facial expression and Cambridge hand gesture datasetsindicate superior performance of the proposed method compared to several recentstate-of-the-art techniques. The proposed method is robust and does not requireadditional processing of the videos, such as foreground detection,interest-point detection or tracking.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| hand-gesture-recognition-on-cambridge | Sanin et al. [sanin2013spatio] | Accuracy: 93% |
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