Unsupervised representation learning with long-term dynamics for skeleton based action recognition

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Abstract

In recent years, skeleton based action recognition is becoming an increasingly attractive alternative to existing video-based approaches, beneficial from its robust and comprehensive 3D information. In this paper, we explore an unsupervised representation learning approach for the first time to capture the long-term global motion dynamics in skeleton sequences. We design a conditional skeleton inpainting architecture for learning a fixed-dimensional representation, guided by additional adversarial training strategies. We quantitatively evaluate the effectiveness of our learning approach on three well-established action recognition datasets. Experimental results show that our learned representation is discriminative for classifying actions and can substantially reduce the sequence inpainting errors.

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APA

Zheng, N., Wen, J., Liu, R., Long, L., Dai, J., & Gong, Z. (2018). Unsupervised representation learning with long-term dynamics for skeleton based action recognition. In 32nd AAAI Conference on Artificial Intelligence, AAAI 2018 (pp. 2644–2651). AAAI press. https://doi.org/10.1609/aaai.v32i1.11853

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