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Dynamic motion phase segmentation using sEMG during countermovement jump based on hidden semi-Markov model

机译:基于隐藏半标率模型的对策跳跃期间使用SEMG动态运动相分割

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Dynamic motion of human shows kinematic aspects related to storing elastic energy in skeletal muscle. This results from joint stiffness modulation and as a consequence, countermovement which is opposite to the intended motion is observed. We propose a segmentation algorithm based on a hidden semi-Markov model that infers dynamic motion phases probabilistically from sEMG observations during countermovement jump. In addition, parameter re-estimation of both left-right state transition and restriction of state duration is applied to reduce frequent state transition due to large variation of sEMG observation probability. In experiments, the segmentation of motion phases using sEMG identified the phases of the vertical position of torso successfully and the parameter re-estimation reduced both the error rate and the transition occurrence.
机译:人体动态运动显示出与在骨骼肌中储存弹性能的运动方面。这是由关节刚度调制结果,因此观察到与预期运动相反的对策。我们提出了一种基于隐藏半标率模型的分割算法,其在对策跳转期间从SEMG观测概率上探讨动态运动阶段。另外,应用左右状态转换和状态持续时间的限制的参数重新估计,以减少由于SEMG观察概率的大变化而导致的频繁状态转换。在实验中,使用SEMG的运动阶段的分割成功地识别躯干垂直位置的阶段,并且参数重新估计减少了误差率和转换发生。

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