Motion Feature Augmented Recurrent Neural Network for Skeleton-based Dynamic Hand Gesture Recognition
About
Dynamic hand gesture recognition has attracted increasing interests because of its importance for human computer interaction. In this paper, we propose a new motion feature augmented recurrent neural network for skeleton-based dynamic hand gesture recognition. Finger motion features are extracted to describe finger movements and global motion features are utilized to represent the global movement of hand skeleton. These motion features are then fed into a bidirectional recurrent neural network (RNN) along with the skeleton sequence, which can augment the motion features for RNN and improve the classification performance. Experiments demonstrate that our proposed method is effective and outperforms start-of-the-art methods.
Xinghao Chen, Hengkai Guo, Guijin Wang, Li Zhang• 2017
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Hand Gesture Recognition | DHG 28 gestures | Accuracy80.3 | 18 | |
| Hand Gesture Recognition | DHG 14 gestures | Accuracy84.7 | 18 | |
| Hand Gesture Recognition | DHG-14 Fine | Average Recognition Rate76.9 | 12 | |
| Hand Gesture Recognition | DHG-14 (Both) | Average Recognition Rate84.68 | 12 | |
| Hand Gesture Recognition | DHG-14 (Coarse) | Average Recognition Rate89 | 12 | |
| Dynamic Hand Gesture Recognition | DHG-14 | Fine Recognition Rate76.9 | 2 | |
| Dynamic Hand Gesture Recognition | DHG-28 | Recognition Rate (Both)80.32 | 2 | |
| Hand Gesture Recognition | DHG-14/28 | LAFED0.0075 | 2 |
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