Learning shape and motion representations for view invariant skeleton-based action recognition

作者:

Highlights:

• Skeleton sequence space as a subset of Geometric Algebra is constructed to represent each skeleton sequence along both spatial and temporal dimensions.

• Rotor-based view transformation overcomes the view variation challenge and reserves relative motions among skeletons.

• Spatio-temporal view invariant model is constructed to model spatial configuration and temporal dynamics of skeleton joints and bones.

• Four skeleton sequence shape and motion representations are learned to comprehensively describe skeleton-based actions, which are fed to a selected multi-stream convolutional neural network for action recognition.

摘要

•Skeleton sequence space as a subset of Geometric Algebra is constructed to represent each skeleton sequence along both spatial and temporal dimensions.•Rotor-based view transformation overcomes the view variation challenge and reserves relative motions among skeletons.•Spatio-temporal view invariant model is constructed to model spatial configuration and temporal dynamics of skeleton joints and bones.•Four skeleton sequence shape and motion representations are learned to comprehensively describe skeleton-based actions, which are fed to a selected multi-stream convolutional neural network for action recognition.

论文关键词:Human action recognition,Skeleton sequence,Representation learning,View invariant,Geometric Algebra

论文评审过程:Received 20 April 2019, Revised 18 December 2019, Accepted 19 February 2020, Available online 21 February 2020, Version of Record 29 February 2020.

论文官网地址:https://doi.org/10.1016/j.patcog.2020.107293