基于回归的肌电控制的高效多定位训练:用迁移学习探索变压器模型。

Shriram Tallam Puranam Raghu, Heather E Williams, Erik Scheme
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引用次数: 0

摘要

最先进的上肢肌电假肢通常使用基于分类的模型进行控制,这些模型不能同时控制手腕和手的运动(自由度或dof)。基于回归的替代方案正在研究中,因为它们确实提供同时的自由度控制,产生更自然的运动,但通常需要更长的训练时间。我们研究了减少基于回归的肌电控制训练负担的方法。使用从10名健全参与者的前臂收集的肌电图(EMG)数据,测试了五种不同的训练回归模型的方法。首先,模型要么传统地使用肘部90°位置的数据进行训练,要么使用来自3个肢体位置的数据进行训练,要么使用少镜头学习(来自3个肢体位置的数据较少)进行训练。然后,使用所有其他用户的数据使用迁移学习来预训练模型,随后使用新的最终用户数据使用传统或少量学习对模型进行微调。使用线性回归、卷积神经网络和基于变压器的方法对所得的五个模型进行评估。有趣的是,结合少量微调的迁移学习预训练模型在所有参与者中获得了第二高的中位数$\mathbf{R}^{2}$ 0.76。我们的研究结果为基于回归的多自由度肌电控制提供了概念证明,这可能更接近于自然肢体功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Multi-Positioned Training for Regression-Based Myoelectric Control: Exploring Transformer Models with Transfer Learning.

State-of-the-art upper-limb myoelectric prostheses are typically controlled using classification-based models that do not offer simultaneous control of wrist and hand movements (degrees of freedom or DOFs). Regression-based alternatives are being studied because they do offer simultaneous DOF control, yielding more natural movements, but generally require longer training routines. We investigated methods to reduce the training burden for regression-based myoelectric control. Five different methods to train regression models were tested using electromyographic (EMG) data collected from the forearms of 10 able-bodied participants. First, models were either trained traditionally with data from elbows at 90° position, with data from 3 limb positions, or trained by few-shot learning (with fewer data from 3 limb positions). Then, transfer learning was employed to pre-train models using data from all other users, with the models subsequently fine-tuned using either traditional or few-shot learning with new end-user data. The resulting five models were evaluated using linear regressor-, Convolutional Neural Network-, and Transformer-based approaches. Interestingly, the transfer learning pre-trained model in conjunction with few-shot fine-tuning achieved the second-highest median $\mathbf{R}^{2}$ of 0.76 across all participants. Our findings offer a proof of concept for regression-based myoelectric control of multiple DOFs that may more closely resemble natural limb function.

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