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Neuro-fuzzy control of sit-to-stand motion using head position tracking

机译:使用头部位置跟踪的局部静止运动的神经模糊控制

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Based on the clinical evidence that head position measured by the multisensory system contributes to motion control, this study suggests a biomechanical human-central nervous system modeling and control framework for sit-to-stand motion synthesis. Motivated by the evidence for a task-oriented encoding of motion by the central nervous system, we propose a framework to synthesize and control sit-to-stand motion using only head position trajectory in the high-level-task-control environment. First, we design a generalized analytical framework comprising a human biomechanical model and an adaptive neuro-fuzzy inference system to emulate central nervous system. We introduce task-space training algorithm for adaptive neuro-fuzzy inference system training. The adaptive neuro-fuzzy inference system controller is optimized in the number of membership functions and training cycles to avoid over-fitting. Next, we develop custom human models based on anthropometric data of real subjects. Using the weighting coefficient method, we estimate body segment parameter. The subject-specific body segment parameter values are used (1) to scale human model for real subjects and (2) in task-space training to train custom adaptive neuro-fuzzy inference system controllers. To validate our modeling and control scheme, we perform extensive motion capture experiments of sit-to-stand transfer by real subjects. We compare the synthesized and experimental motions using kinematic analyses. Our analytical modeling-control scheme proves to be scalable to real subjects' body segment parameter and the task-space training algorithm provides a means to customize adaptive neuro-fuzzy inference system efficiently. The customized adaptive neuro-fuzzy inference system gives 68%-98% improvement over general adaptive neuro-fuzzy inference system. This study has a broader scope in the fields of rehabilitation, humanoid robotics, and virtual characters' motion planning based on high-level-task-control scheme.
机译:基于临床证据,该研究衡量了通过多思源系统测量的头部位置有助于运动控制,本研究表明了一种用于静止运动合成的生物力学人类中枢神经系统建模和控制框架。通过中枢神经系统的任​​务导向编码的证据,我们提出了一种框架,在高级任务控制环境中仅使用头位置轨迹来合成和控制位于站立运动。首先,我们设计一种包括人生物力学模型和自适应神经模糊推理系统的广义分析框架,以模拟中枢神经系统。我们为自适应神经模糊推理系统培训介绍了任务空间训练算法。自适应神经模糊推理系统控制器在隶属函数和训练周期的数量中进行了优化,以避免过度拟合。接下来,我们基于真实科目的人类测量数据开发定制人体模型。使用加权系数方法,我们估算身体段参数。使用主题的身体段参数值(1)以规模为真实主题的人类模型和(2)在任务空间训练中培训定制自适应神经模糊推理系统控制器。为了验证我们的建模和控制方案,我们通过真实科目进行广泛的运动捕获实验。我们使用运动学分析比较合成和实验运动。我们的分析模型控制方案证明可扩展到真实的主体的身体段参数,并且任务空间训练算法提供了有效地定制自适应神经模糊推理系统的方法。定制的自适应神经模糊推理系统提供了68%-98%的改进,完善了一般的自适应神经模糊推理系统。本研究具有基于高级任务控制方案的康复,人形机器人和虚拟人物运动规划领域的更广泛的范围。

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