22/11/2021

Few-shot Action Recognition with Prototype-centered Attentive Learning

Xiatian Zhu, Antoine S Toisoul, Juan-Manuel Perez-Rua, Li Zhang, Brais Martinez, Tao Xiang

Keywords: Few-shot learning, Video recognition, Action classification, Small training data, Model pre-training, Meta-learning, Transformer, Self-attention learning, Cross-attention learning, Prototype learning, Prototype-centered learning, Hybrid-attention learning

Abstract: Few-shot action recognition aims to recognize action classes with few training samples. Most existing methods adopt a meta-learning approach with episodic training. In each episode, the few samples in a meta-training task are split into support and query sets. The former is used tobuild a classifier, which is then evaluated on the latter using a query-centered loss for model updating. There are however two major limitations: lack of data efficiency due to the query-centered only loss design and inability to deal with the support set outlying samples and inter-class distribution overlapping problems. In this paper, we overcome both limitations by proposing a new Prototype-centered Attentive Learning (PAL) model composed of two novel components. First, a prototype-centered contrastive learning loss is introduced to complement the conventional query-centered learning objective, in order to make full use of the limited training samples in each episode. Second, PAL further integrates a hybrid attentive learning mechanism that can minimize the negative impacts of outliers and promote class separation. Extensive experiments on four standard few-shot action benchmarks show that our method clearly outperforms previous state-of-the-art methods, with the improvement particularly significant (>10%) on the most challenging fine-grained action recognition benchmark.

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