Estimating human body segment parameters using motion capture data

Jianjun Zhao, Yi Wei, Shi-hong Xia, Zhaoqi Wang
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引用次数: 10

Abstract

The estimation of human body segment properties (BSPs), including mass, centroid and moments of inertia, is required in the kinetic analysis of human motion. Nowadays, with the development of motion capture technology, motion capture data plays an important role in the kinetic analysis of human motion. An interesting problem is whether BSPs can be estimated using the motion capture data. It is well known that the motions of human body should obey Newton's laws of mechanics, which means that human BSPs and motion data should satisfy the motion equation. Then we build an optimization model according to this principle where the objective function measures the degree of mismatch between motion data, human BSPs and Newton's laws of mechanics. By solving this optimization model, we can estimate the human BSPs. To deal with this optimization, we adopt three strategies: variables block, adjustment on constraints and stochastic local search. This method has two advantages. First, given motion capture data, BSPs can be estimated directly without carrying out additional measurements, such as CT imaging. Second, BSPs and motion capture data can be analyzed together. Simulation experimental results show that the errors of mass, centroid and moment of inertia can be controlled within 10%, 5% and 15% respectively.
利用动作捕捉数据估计人体部分参数
在人体运动的动力学分析中,需要估计人体部分特性(BSPs),包括质量、质心和转动惯量。如今,随着动作捕捉技术的发展,动作捕捉数据在人体运动的动力学分析中起着重要的作用。一个有趣的问题是是否可以使用动作捕捉数据来估计bsp。众所周知,人体的运动应该遵循牛顿力学定律,这意味着人体的BSPs和运动数据应该满足运动方程。然后我们根据这一原理建立了一个优化模型,其中目标函数测量运动数据、人类bsp和牛顿力学定律之间的不匹配程度。通过求解该优化模型,我们可以估计出人类的bsp。为了解决这种优化问题,我们采用了三种策略:变量块、约束调整和随机局部搜索。这种方法有两个优点。首先,给定动作捕捉数据,可以直接估计BSPs,而无需进行额外的测量,如CT成像。其次,BSPs和动作捕捉数据可以一起分析。仿真实验结果表明,质量、质心和转动惯量的误差分别控制在10%、5%和15%以内。
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