Else-Net: Elastic Semantic Network for Continual Action Recognition from Skeleton Data

Tianjiao Li, Qiuhong Ke, Hossein Rahmani, Rui En Ho, Henghui Ding, Jun Liu
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引用次数: 28

Abstract

Most of the state-of-the-art action recognition methods focus on offline learning, where the samples of all types of actions need to be provided at once. Here, we address continual learning of action recognition, where various types of new actions are continuously learned over time. This task is quite challenging, owing to the catastrophic forgetting problem stemming from the discrepancies between the previously learned actions and current new actions to be learned. Therefore, we propose Else-Net, a novel Elastic Semantic Network with multiple learning blocks to learn diversified human actions over time. Specifically, our Else-Net is able to automatically search and update the most relevant learning blocks w.r.t. the current new action, or explore new blocks to store new knowledge, preserving the unmatched ones to retain the knowledge of previously learned actions and alleviates forgetting when learning new actions. Moreover, even though different human actions may vary to a large extent as a whole, their local body parts can still share many homogeneous features. Inspired by this, our proposed Else-Net mines the shared knowledge of the decomposed human body parts from different actions, which benefits continual learning of actions. Experiments show that the proposed approach enables effective continual action recognition and achieves promising performance on two large-scale action recognition datasets.
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Else-Net:基于骨架数据的连续动作识别弹性语义网络
大多数最先进的动作识别方法都集中在离线学习上,需要一次提供所有类型动作的样本。在这里,我们讨论动作识别的持续学习,随着时间的推移,各种类型的新动作被不断学习。这个任务是相当具有挑战性的,因为灾难性的遗忘问题源于先前学习的行为和当前要学习的新行为之间的差异。因此,我们提出了一种新的弹性语义网络Else-Net,它具有多个学习块,可以随着时间的推移学习不同的人类行为。具体来说,我们的Else-Net能够自动搜索和更新与当前新动作相关的最相关的学习块,或者探索新的块来存储新知识,保留不匹配的块来保留以前学习过的动作知识,并减轻学习新动作时的遗忘。此外,尽管不同的人类行为可能在很大程度上是一个整体,但他们的局部身体部位仍然可以共享许多同质特征。受此启发,我们提出的Else-Net从不同的动作中挖掘分解的人体部位的共享知识,有利于动作的持续学习。实验表明,该方法能够有效地进行连续动作识别,并在两个大规模动作识别数据集上取得了令人满意的效果。
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