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Research on Three-dimensional Motion History Image Model and Extreme Learning Machine for Human Body Movement Trajectory Recognition

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  • Zheng Chang
  • Xiaojuan Ban
  • Qing Shen
  • Jing Guo

Abstract

Based on the traditional machine vision recognition technology and traditional artificial neural networks about body movement trajectory, this paper finds out the shortcomings of the traditional recognition technology. By combining the invariant moments of the three-dimensional motion history image (computed as the eigenvector of body movements) and the extreme learning machine (constructed as the classification artificial neural network of body movements), the paper applies the method to the machine vision of the body movement trajectory. In detail, the paper gives a detailed introduction about the algorithm and realization scheme of the body movement trajectory recognition based on the three-dimensional motion history image and the extreme learning machine. Finally, by comparing with the results of the recognition experiments, it attempts to verify that the method of body movement trajectory recognition technology based on the three-dimensional motion history image and extreme learning machine has a more accurate recognition rate and better robustness.

Suggested Citation

  • Zheng Chang & Xiaojuan Ban & Qing Shen & Jing Guo, 2015. "Research on Three-dimensional Motion History Image Model and Extreme Learning Machine for Human Body Movement Trajectory Recognition," Mathematical Problems in Engineering, Hindawi, vol. 2015, pages 1-15, May.
  • Handle: RePEc:hin:jnlmpe:528190
    DOI: 10.1155/2015/528190
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