...
首页> 外文期刊>Journal of NeuroEngineering Rehabilitation >Comparison of regression models for estimation of isometric wrist joint torques using surface electromyography
【24h】

Comparison of regression models for estimation of isometric wrist joint torques using surface electromyography

机译:使用表面肌电图估计等距腕关节扭矩的回归模型的比较

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Background Several regression models have been proposed for estimation of isometric joint torque using surface electromyography (SEMG) signals. Common issues related to torque estimation models are degradation of model accuracy with passage of time, electrode displacement, and alteration of limb posture. This work compares the performance of the most commonly used regression models under these circumstances, in order to assist researchers with identifying the most appropriate model for a specific biomedical application. Methods Eleven healthy volunteers participated in this study. A custom-built rig, equipped with a torque sensor, was used to measure isometric torque as each volunteer flexed and extended his wrist. SEMG signals from eight forearm muscles, in addition to wrist joint torque data were gathered during the experiment. Additional data were gathered one hour and twenty-four hours following the completion of the first data gathering session, for the purpose of evaluating the effects of passage of time and electrode displacement on accuracy of models. Acquired SEMG signals were filtered, rectified, normalized and then fed to models for training. Results It was shown that mean adjusted coefficient of determination ( R a 2 ) values decrease between 20%-35% for different models after one hour while altering arm posture decreased mean R a 2 values between 64% to 74% for different models. Conclusions Model estimation accuracy drops significantly with passage of time, electrode displacement, and alteration of limb posture. Therefore model retraining is crucial for preserving estimation accuracy. Data resampling can significantly reduce model training time without losing estimation accuracy. Among the models compared, ordinary least squares linear regression model (OLS) was shown to have high isometric torque estimation accuracy combined with very short training times.
机译:背景技术已经提出了几种回归模型,用于使用表面肌电图(SEMG)信号估计等距关节扭矩。与扭矩估算模型有关的常见问题是模型准确性随时间的流逝,电极位移和肢体姿势的改变而降低。这项工作比较了在这种情况下最常用的回归模型的性能,以帮助研究人员为特定的生物医学应用确定最合适的模型。方法11名健康志愿者参加了这项研究。当每个志愿者弯曲并伸展手腕时,使用配有扭矩传感器的定制钻机来测量等距扭矩。在实验过程中,除了手腕关节的扭矩数据外,还从八条前臂肌肉获得了SEMG信号。在第一个数据收集会话完成后一小时和二十四小时,收集了其他数据,目的是评估时间流逝和电极位移对模型准确性的影响。对获得的SEMG信号进行滤波,校正,归一化,然后输入模型进行训练。结果表明,在一小时后,不同模型的平均调整后测定决定系数(R a 2)值降低20%-35%,而改变手臂姿势降低不同模型的平均R a 2值在64%至74%之间。结论模型估计准确性随着时间的流逝,电极位移和肢体姿势的改变而显着下降。因此,模型再训练对于保持估计精度至关重要。数据重采样可以显着减少模型训练时间,而不会损失估计精度。在比较的模型中,普通最小二乘线性回归模型(OLS)被证明具有很高的等距扭矩估计精度,并且训练时间非常短。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号