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3D Upper Limb Motion Modeling and Estimation Using Wearable Micro-sensors

机译:使用可穿戴微传感器的3D上肢运动建模和估计

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摘要

Human motion capture technologies are widely used in interactive game and learning, animation, film special effects, health-care and navigation. Because of the agility, upper limb motion estimation is the most difficult in human motion capture. Traditional methods always assume that the movements of upper arm and forearm are independent and estimate their movements separately; therefore, the estimated motion are always with serious distortion. In the paper, we proposed a novel ubiquitous upper limb motion estimation method using wearable micro-sensors, which concentrated on modeling the relationship of the movements between upper arm and forearm. Exploration of the skeleton structure of upper limb as a link structure with 5 degrees of freedom was firstly proposed to model human upper limb motion. After that, parameters were defined according to Denavit-Hartenberg convention, forward kinematic equations of upper limb were derived, and an Unscented Kalman filter was invoked to estimate the defined parameters. The experimental results have shown the feasibility and effectiveness of the proposed upper limb motion capture and analysis algorithm.
机译:人体动作捕捉技术被广泛用于互动游戏和学习,动画,电影特效,保健和导航中。由于敏捷性,上肢运动估计是人类运动捕获中最困难的。传统方法总是假设上臂和前臂的运动是独立的,并分别估计它们的运动。因此,估计的运动总是带有严重的失真。在本文中,我们提出了一种使用可穿戴微传感器的普遍存在的上肢运动估计方法,该方法集中于建模上臂和前臂之间的运动关系。首先提出了以5个自由度为链接结构的上肢骨骼结构的探索,以对人体上肢运动进行建模。此后,根据Denavit-Hartenberg惯例定义参数,导出上肢的正向运动方程,并调用Unscented Kalman滤波器来估计定义的参数。实验结果表明了所提出的上肢运动捕捉和分析算法的可行性和有效性。

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