Chang Lillian Y, Pollard Nancy S
School of Computer Science, Carnegie Mellon University, Pittsburgh, Pennsylvania 15213, USA.
J Biomech. 2007;40(6):1392-400. doi: 10.1016/j.jbiomech.2006.05.010. Epub 2006 Jul 7.
This paper presents a new direct method for estimating the average center of rotation (CoR). An existing least-squares (LS) solution has been shown by previous works to have reduced accuracy for data with small range of motion (RoM). Alternative methods proposed to improve the CoR estimation use iterative algorithms. However, in this paper we show that with a carefully chosen normalization scheme, constrained least-squares solutions can perform as well as iterative approaches, even for challenging problems with significant noise and small RoM. In particular, enforcing the normalization constraint avoids poor fits near plane singularities that can affect the existing LS method. Our formulation has an exact solution, accounts for multiple markers simultaneously, and does not depend on manually-adjusted parameters. Simulation tests compare the method to four published CoR estimation techniques. The results show that the new approach has the accuracy of the iterative methods as well as the short computation time and repeatability of a least-squares solution. In addition, application of the new method to experimental motion capture data of the thumb carpometacarpal (CMC) joint yielded a more plausible CoR location compared to the previously reported LS solution and required less time than all four alternative techniques.
本文提出了一种估计平均旋转中心(CoR)的新直接方法。先前的研究表明,现有的最小二乘(LS)解对于运动范围(RoM)较小的数据精度会降低。为提高CoR估计提出的替代方法使用迭代算法。然而,在本文中我们表明,通过精心选择归一化方案,即使对于存在大量噪声和小RoM的具有挑战性的问题,约束最小二乘解也能与迭代方法表现得一样好。特别是,实施归一化约束可避免在平面奇点附近出现可能影响现有LS方法的拟合不佳情况。我们的公式有精确解,能同时考虑多个标记,且不依赖于手动调整的参数。模拟测试将该方法与四种已发表的CoR估计技术进行了比较。结果表明,新方法具有迭代方法的精度以及最小二乘解的短计算时间和可重复性。此外,将新方法应用于拇指腕掌(CMC)关节的实验性运动捕捉数据时,与先前报道的LS解相比,得到了更合理的CoR位置,并且比所有四种替代技术所需时间更少。