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Pilot Study on Gait Classification Using fNIRS Signals

机译:使用FNIRS信号进行步态分类的试验研究

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Rehabilitation training is essential for motor dysfunction patients, and the training through their subjective motion intention, comparing to passive training, is more conducive to rehabilitation. This study proposes a method to identify motion intention of different walking states under the normal environment, by using the functional near-infrared spectroscopy (fNIRS) technology. Twenty-two healthy subjects were recruited to walk with three different gaits (including small-step with low-speed, small-step with midspeed, midstep with low-speed). The wavelet packet decomposition was used to find out the main characteristic channels in different motion states, and these channels with links in frequency and space were combined to define as feature vectors. According to different permutations and combinations of all feature vectors, a library for support vector machines (libSVM) was used to achieve the best recognition model. Finally, the accuracy rate of these three walking states was 78.79%. This study implemented the classification of different states' motion intention by using the fNIRS technology. It laid a foundation to apply the classified motion intention of different states timely, to help severe motor dysfunction patients control a walking-assistive device for rehabilitation training, so as to help them restore independent walking abilities and reduce the economic burdens on society.
机译:康复培训对于电动机功能障碍患者至关重要,以及通过其主观运动意图的培训,与被动培训相比,更有利于康复。本研究提出了一种方法来识别在正常环境下不同行走状态的运动意图,通过使用功能近红外光谱(FNIRS)技术。招募了二十两位健康的科目,用三个不同的Gaits走(包括小阶段,用低速,中间跳跃,低速)。小波分组分解用于找出不同运动状态中的主要特征通道,并且这些通道与频率和空间的链路组合以定义为特征向量。根据所有特征向量的不同排列和组合,用于支持矢量机(Libsvm)的库来实现最佳识别模型。最后,这三个行走状态的准确率为78.79%。本研究通过使用FNIRS技术实施了不同状态的运动意图的分类。它为及时应用不同州的分类运动意图奠定了基础,帮助严重的电机功能障碍患者控制一个康复培训的步行辅助装置,从而帮助他们恢复独立的行走能力,减少社会的经济负担。

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    Soochow Univ Key Lab Robot &

    Syst Jiangsu Prov Sch Mech &

    Elect Engn Suzhou Peoples R China;

    Soochow Univ Key Lab Robot &

    Syst Jiangsu Prov Sch Mech &

    Elect Engn Suzhou Peoples R China;

    Soochow Univ Key Lab Robot &

    Syst Jiangsu Prov Sch Mech &

    Elect Engn Suzhou Peoples R China;

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  • 正文语种 eng
  • 中图分类 寄生生物学;
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