Cifuentes Jenny, Boulanger Pierre, Pham Minh Tu, Moreau Richard, Prieto Flavio
Annu Int Conf IEEE Eng Med Biol Soc. 2014;2014:1826-9. doi: 10.1109/EMBC.2014.6943964.
Hand human gesture recognition has been an important research topic widely studied around the world, as this field offers the ability to identify, recognize, and analyze human gestures in order to control devices or to interact with computer interfaces. In particular, in medical training, this approach is an important tool that can be used to obtain an objective evaluation of a procedure performance. In this paper, some obstetrical gestures, acquired by a forceps, were studied with the hypothesis that, as the scribbling and drawing movements, they obey the one-sixth power law, an empirical relationship which connects path curvature, torsion, and euclidean velocity. Our results show that obstetrical gestures have a constant affine velocity, which is different for each type of gesture and based on this idea this quantity is proposed as an appropriate classification feature in the hand human gesture recognition field.
手部人体手势识别一直是全球广泛研究的重要课题,因为该领域能够识别、辨认并分析人类手势,以便控制设备或与计算机界面进行交互。特别是在医学培训中,这种方法是一种重要工具,可用于对手术操作进行客观评估。在本文中,研究了通过产钳获取的一些产科手势,并假设与涂鸦和绘图动作一样,它们遵循六分之一幂定律,这是一种将路径曲率、挠率和欧几里得速度联系起来的经验关系。我们的结果表明,产科手势具有恒定的仿射速度,每种手势类型的该速度都不同,基于这一观点,该量被提议作为手部人体手势识别领域的一种合适分类特征。