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Estimation of kinematics parameters dependent on pronation supination for modeling forearm skeletal system based on CT images

机译:基于前旋后旋的运动学参数估计,用于基于CT图像的前臂骨骼系统建模

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In the disease developing mechanism of baseball elbow, it is believed that there is a need to understand the skeletal system of the elbow joint and forearm. Focusing on the interior of a elbow joint, the humerus, ulna and radius are constituted a complex structure covered with soft tissue, such as the joint capsule and collateral ligaments. In order to clarify the failure of the forearm, Kecskemethy et al., considered a simple forearm skeleton model. Although they estimated ulnar behavior by adjusting the stiffness of the model, Nojiri et al. proposed a method for estimating the link length and the measurement error gain using the steepest descent method (SDM) as another approach. However, since the least squares method (LSM) has a possibility of falling into a local solution; hence, in this paper, we propose a method for estimating in Particle Swarm Optimization (PSO). In addition, by estimating the link length and the measurement error gain that made dependent on the pronation supination (pro-/supination) posture, we indicate that was able to carry out the reduction of estimation error.
机译:在棒球肘的疾病发展机理中,认为需要了解肘关节和前臂的骨骼系统。肱骨,尺骨和radius骨集中在肘关节的内部,构成覆盖着软组织的复杂结构,例如关节囊和侧副韧带。为了澄清前臂的失败,Kecskemethy等人考虑了一个简单的前臂骨骼模型。尽管他们通过调整模型的刚度来评估尺骨行为,但Nojiri等人。提出了一种使用最速下降法(SDM)估算链路长度和测量误差增益的方法。但是,由于最小二乘法(LSM)可能会陷入局部解;因此,在本文中,我们提出了一种用于粒子群优化(PSO)的估计方法。另外,通过估计依赖于旋前旋后(pro / supination)姿势的链路长度和测量误差增益,我们表明能够进行估计误差的减小。

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