Motion beat induction based on short-term principal component analysis

  • Authors:
  • Jianfeng Xu;Koichi Takagi;Akio Yoneyama

  • Affiliations:
  • KDDI R&D Laboratories Inc.;KDDI R&D Laboratories Inc.;KDDI R&D Laboratories Inc.

  • Venue:
  • ACM SIGGRAPH ASIA 2009 Sketches
  • Year:
  • 2009

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Abstract

We propose a novel tool called short-term principal component analysis (ST-PCA) to analyze motion capture (MoCap) data, which records realistic movements in a high dimensional time series. Our ST-PCA is successfully applied to beat induction, which is an important perception of human motion especially in dances and is required by many applications such as music synchronization [Kim et al. 2003; Shiratori et al. 2006]. Following [Kim et al. 2003], motion beats are defined as the regular moments when the movement is changed significantly in direction or magnitude. Different from the previous approaches [Kim et al. 2003; Shiratori et al. 2006] that analyze MoCap data in each channel, we estimate the motion beats regarding MoCap data as a whole with the proposed ST-PCA, which performs PCA in a sliding window. Our experiments demonstrate that our method can estimate much more accurate beats in a wide range of motions including complicated dances.