2019 IEEE Winter Conference on Applications of Computer Vision (WACV) | 2019

Unsupervised Feature Learning of Human Actions As Trajectories in Pose Embedding Manifold

 
 
 
 

Abstract


An unsupervised human action modeling framework can provide useful pose-sequence representation, which can be utilized in a variety of pose analysis applications. In this work we propose a novel temporal pose-sequence modeling framework, which can embed the dynamics of 3D human-skeleton joints to a latent space in an efficient manner. In contrast to an end-to-end framework explored by previous works, we disentangle the task of individual pose representation learning from the task of learning actions as a sequence of pose embeddings. In order to realize a continuous pose embedding manifold along with better reconstructions, we propose an unsupervised, manifold learning procedure named Encoder GAN, (or EnGAN). Further we use the pose embeddings generated by EnGAN to model human actions using an RNN auto-encoder architecture, PoseRNN. We introduce first-order gradient loss to explicitly enforce temporal regularity in the predicted motion sequence. A hierarchical feature fusion technique is also investigated for simultaneous modeling of local skeleton joints along with global pose variations. We demonstrate state-of-the-art transfer-ability of the learned representation against other supervisedly and unsupervisedly learned motion embeddings for the task of fine-grained action recognition on SBU interaction dataset. Further, we show the qualitative strengths of the proposed framework by visualizing skeleton pose reconstructions and interpolations in pose-embedding space, and low dimensional principal component projections of the reconstructed pose trajectories.

Volume None
Pages 1459-1467
DOI 10.1109/WACV.2019.00160
Language English
Journal 2019 IEEE Winter Conference on Applications of Computer Vision (WACV)

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