Online identification and visualization of the statically equivalent serial chain via constrained Kalman filter

Alejandro González, M. Hayashibe, P. Fraisse
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引用次数: 12

Abstract

A human's center of mass (CoM) trajectory is useful to evaluate the dynamic stability during daily life activities such as walking and standing up. To estimate the subject-specific CoM position in the home environment, we make use of a statically equivalent serial chain (SESC) developed with a portable measurement system. In this paper we implement a constrained Kalman filter to achieve an online estimation of the SESC parameters while accounting for the human body's bilateral symmetry. This results in constraining SESC parameters to be consistent with the human skeletal model used. The proposed identification method can inform the subject or the therapist, in real-time, about the quality of the on-going CoM estimation. This information can be helpful to reduce the identification time and establish a personalized protocol. A Kinect is used as a markerless motion capture system for measuring limb orientations while the Wii board is used to measure the subject's center of pressure (CoP) during the identification phase. CoP measurements and Kinect data were recorded for four able-bodied subjects. The recorded data was then given to the proposed recursive algorithm to identify the parameters of the SESC online. A cross-validation test was performed to verify the identification performance. The results for these subjects are shown and discussed.
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基于约束卡尔曼滤波的静态等效序列链在线辨识与可视化
人体质心轨迹是评价人体在行走和站立等日常生活活动中的动态稳定性的有效方法。为了估计受试者在家庭环境中的特定CoM位置,我们使用了与便携式测量系统一起开发的静态等效串行链(SESC)。在本文中,我们实现了一个约束卡尔曼滤波器,以实现在线估计SESC参数,同时考虑到人体的双边对称性。这导致约束SESC参数与所使用的人类骨骼模型一致。所提出的识别方法可以实时告知受试者或治疗师正在进行的CoM估计的质量。这些信息有助于减少识别时间和建立个性化协议。Kinect作为无标记动作捕捉系统用于测量肢体方向,而Wii板用于在识别阶段测量受试者的压力中心(CoP)。对四名身体健全的受试者进行CoP测量和Kinect数据记录。然后将记录的数据交给所提出的递归算法来在线识别SESC的参数。进行交叉验证检验以验证识别性能。对这些课题的结果进行了展示和讨论。
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