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Deep ChaosNet for Action Recognition in Videos
2021
Complexity
Current methods of chaos-based action recognition in videos are limited to the artificial feature causing the low recognition accuracy. In this paper, we improve ChaosNet to the deep neural network and apply it to action recognition. First, we extend ChaosNet to deep ChaosNet for extracting action features. Then, we send the features to the low-level LSTM encoder and high-level LSTM encoder for obtaining low-level coding output and high-level coding results, respectively. The agent is a
doi:10.1155/2021/6634156
fatcat:rhnhy3wornbpdlyvv24657ajra