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Reducing the effects of muscle fatigue on upper limb myoelectric control using adaptive LDA

机译:使用自适应LDA减少肌肉疲劳对上肢肌电控制的影响

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Muscle fatigue is considered one of the main causes of sEMG changes during repetitive contractions performed for long periods of time. In the current work we are proposing and evaluating an approach in order to reduce the effects of muscle fatigue on upper limb myoelectric control using adaptive LDA. A dataset of surface EMG signals from nine subjects, including six normally-limbed and three upper limb amputees, was processed. The EMG signal was encoded using four time-domain features and four coefficients of an auto-regressive model. Adaptive and non-adaptive strategies were compared using Accuracy, False Positive Rate, Sensitivity and F1 score. Results obtained with normally-limbed subjects show that in normal scenario while muscle fatigue increases, the recognition accuracy and Sensitivity of the classifier decrease from more than 90 % to less than 58 %; False Positive Rate increases from around 9 % to 36.2 %, and F1-score decreases from 0.9 to 0.6. In contrast, parameters maintain a more stable and higher performance when adaptive LDA is evaluated. Although control in amputees shows a reduction in performance compared with normally-limbed subjects, results show a similar trend.? The Wilcoxon sum rank test shows a significant increase in performance of upper limb myoelectric control tasks when adaptive LDA is used. The main limitation of this work is the need of supervision in the adaptation procedure to decide if a trial is adequate for retrain the model, making the proposed method difficult to implement in a real scenario. Future work is needed in order to obtain a parameter that serves to choose the proper trial for model retraining.
机译:肌肉疲劳被认为是长时间进行重复收缩过程中sEMG变化的主要原因之一。在当前的工作中,我们正在提议和评估一种方法,以减少使用自适应LDA的肌肉疲劳对上肢肌电控制的影响。处理了来自九名受试者的表面肌电信号的数据集,包括六名正常肢体截肢者和三名上肢截肢者。使用四个时域特征和自回归模型的四个系数对EMG信号进行编码。使用准确性,误报率,敏感性和F1得分比较了自适应和非自适应策略。正常肢体受试者获得的结果表明,在正常情况下,虽然肌肉疲劳增加,但分类器的识别准确度和敏感度从大于90%降至小于58%;误报率从9%左右增加到36.2%,F1分数从0.9点减少到0.6分。相反,在评估自适应LDA时,参数可保持更稳定和更高的性能。尽管与正常肢体受试者相比,截肢者的对照表现出了下降,但结果显示出相似的趋势。当使用自适应LDA时,Wilcoxon和秩检验显示出上肢肌电控制任务的性能显着提高。这项工作的主要局限性在于,需要在适应程序中进行监督,以决定是否有足够的经验来重新训练模型,从而使所提出的方法很难在实际情况下实施。为了获得一个参数,需要进行进一步的工作,该参数可以为模型重新训练选择合适的试验。

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