首页> 外文会议>2011 1st Middle East Conference on Biomedical Engineering >Real time estimation and tracking of human body Center of Mass using 2D video imaging
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Real time estimation and tracking of human body Center of Mass using 2D video imaging

机译:使用2D视频成像实时估计和跟踪人体重心

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摘要

Estimating the position of the body Center of Mass (CoM) is a very important issue in human movement analysis in general, and in gait analysis as a more specified field. There are different methods to estimate this feature of gait. However, application of video imaging for analyzing human gait has increased tremendously due to its availability and non-interrupting nature. In this paper, a novel method is proposed for estimating the position of CoM using commercial VGA cameras. This method employs some of known algorithms in shape analysis, such as triangulation and using image signatures to segments body parts. Although the algorithms are well-known in the field of image processing. But their combination resulted in powerful segmentation method. Besides this segmentation method the proposed method benefits from a powerful background estimation method which makes it suitable to be used in real applications. The most important feature of the proposed method is its autonomy and speed, which make it suitable for use in sport analysis and elderly care. In addition to estimation of the CoM, this method can easily be applied to estimate other gait parameters, such as linear or angular speed of each link, joint angles. Such characteristics make the algorithm a suitable basis for building a complete gait analysis system.
机译:总体上,估计人体重心(CoM)的位置在人体运动分析中以及在步态分析(更具体的领域)中都是非常重要的问题。有不同的方法可以估算步态特征。然而,由于其可用性和不间断的性质,视频成像在分析人的步态方面的应用已大大增加。在本文中,提出了一种使用商用VGA摄像机估计CoM位置的新方法。该方法在形状分析中采用了一些已知的算法,例如三角剖分和使用图像签名来分割身体部位。尽管这些算法在图像处理领域是众所周知的。但是它们的结合产生了强大的分割方法。除了这种分割方法之外,所提出的方法还受益于强大的背景估计方法,这使其适合在实际应用中使用。所提出方法的最重要特征是它的自主性和速度,使其适合用于运动分析和老年人护理。除了估计CoM之外,此方法还可以轻松地用于估计其他步态参数,例如每个链接的线速度或角速度,关节角度。这些特性使该算法成为构建完整步态分析系统的合适基础。

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