An Effective 3D Geometric Relational Feature Descriptor for Human Action Recognition

L. Hoang, T. V. Pham, Jenq-Neng Hwang
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引用次数: 14

Abstract

This paper presents an effective feature descriptor for recognizing human actions from three-dimension (3D) motion capture video sequences. The proposed feature descriptor is extended from the Boolean features which have been successfully used in computer animation. We first transform 3D coordinates of specified human points, as provided by the motion capture data system, into corresponding 3D points as defined in an articulated 3D human model. We then derive novel 3D geometric relational features, a numeric (continuous-valued) version of the Boolean features, to represent the geometric relations among body points of a pose. Finally, the proposed feature descriptor is applied in human action classification using the hidden Markov model. The simulation results indicate the effectiveness of the proposed feature descriptor as evidenced by the high recognition rate.
一种用于人体动作识别的有效三维几何关系特征描述符
本文提出了一种有效的特征描述符,用于从三维动作捕捉视频序列中识别人体动作。该特征描述符是在布尔特征的基础上扩展而来的,布尔特征已经成功地应用于计算机动画中。我们首先将动作捕捉数据系统提供的指定人体点的三维坐标转换为铰接的3D人体模型中定义的相应3D点。然后,我们推导出新的三维几何关系特征,布尔特征的数值(连续值)版本,以表示一个姿势的身体点之间的几何关系。最后,利用隐马尔可夫模型将所提出的特征描述符应用于人类行为分类。仿真结果表明了所提特征描述符的有效性和较高的识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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