Attention-Aware Sampling via Deep Reinforcement Learning for Action Recognition

Authors

  • Wenkai Dong National Laboratory of Pattern Recognition
  • Zhaoxiang Zhang National Laboratory of Pattern Recognition
  • Tieniu Tan National Laboratory of Pattern Recognition

DOI:

https://doi.org/10.1609/aaai.v33i01.33018247

Abstract

Deep learning based methods have achieved remarkable progress in action recognition. Existing works mainly focus on designing novel deep architectures to achieve video representations learning for action recognition. Most methods treat sampled frames equally and average all the frame-level predictions at the testing stage. However, within a video, discriminative actions may occur sparsely in a few frames and most other frames are irrelevant to the ground truth and may even lead to a wrong prediction. As a result, we think that the strategy of selecting relevant frames would be a further important key to enhance the existing deep learning based action recognition. In this paper, we propose an attentionaware sampling method for action recognition, which aims to discard the irrelevant and misleading frames and preserve the most discriminative frames. We formulate the process of mining key frames from videos as a Markov decision process and train the attention agent through deep reinforcement learning without extra labels. The agent takes features and predictions from the baseline model as input and generates importance scores for all frames. Moreover, our approach is extensible, which can be applied to different existing deep learning based action recognition models. We achieve very competitive action recognition performance on two widely used action recognition datasets.

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Published

2019-07-17

How to Cite

Dong, W., Zhang, Z., & Tan, T. (2019). Attention-Aware Sampling via Deep Reinforcement Learning for Action Recognition. Proceedings of the AAAI Conference on Artificial Intelligence, 33(01), 8247-8254. https://doi.org/10.1609/aaai.v33i01.33018247

Issue

Section

AAAI Technical Track: Vision