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A new hierarchical approach for simultaneous control of multi-joint powered prostheses

机译:同时控制多关节动力假体的一种新的分层方法

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Advanced upper-limb prostheses capable of actuating multiple degrees of freedom (DOF) are now commercially available. Pattern recognition based algorithms that use surface electromyography (EMG) signals measured from residual muscles show great promise as multi-DOF controllers. Unfortunately, current pattern recognition systems are limited to sequential control of each DOF. This study introduces a hierarchy of linear discriminant analysis (LDA) classifiers arranged to provide simultaneous DOF control. This approach and two other simultaneous control strategies were evaluated using healthy subjects controlling up to four DOFs, where any two DOFs could be controlled simultaneously. The new hierarchical approach was the most promising with classification errors at or below 15% on average for discrete and combined motions. The classification performance was significantly better (p < 0.05) than using a single LDA classifier trained to recognize both discrete and combined motions or classifying each DOF using a set of parallel classifiers. The high accuracy of the hierarchical approach suggests that pattern recognition techniques can be extended to permit simultaneous control, potentially allowing amputees to produce more fluid, life-like movements, ultimately increasing their quality of life.
机译:能够激活多个自由度(DOF)的高级上肢假体现已上市。基于模式识别的算法使用从残留的肌肉测量的表面肌电图(EMG)信号,显示出作为多自由度控制器的巨大希望。不幸的是,当前的模式识别系统仅限于每个DOF的顺序控制。这项研究介绍了线性判别分析(LDA)分类器的层次结构,这些分类器提供了同时进行的自由度控制。使用控制多达四个自由度的健康受试者评估了该方法和其他两个同时控制策略,其中可以同时控制两个自由度。新的分层方法是最有前途的,对于离散运动和组合运动,分类误差平均为15%或以下。与使用单个LDA分类器(经过训练可识别离散运动和组合运动)或使用一组并行分类器对每个DOF进行分类相比,分类性能明显更好(p <0.05)。分层方法的高精度表明,模式识别技术可以扩展以允许同时控制,从而可能使截肢者产生更多流畅,逼真的动作,最终提高其生活质量。

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