Transfer learning using low-dimensional subspaces for EMG-based classification of hand posture.

Sezen Yağmur Günay, Mathew Yarossi, Dana H Brooks, Eugene Tunik, Deniz Erdoğmuş
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Abstract

This study proposes a novel approach for evaluating the task invariance of muscle synergies, vital for potential implementation in improving prosthetic hand control. We do this by using a transfer learning paradigm to test for invariance across a relatively small set of hand/forearm muscle synergies, derived from electromyographic (EMG) activation patterns during voluntary behaviors such as finger spelling and grasp mimicking postures and unconstrained exploration. EMG for each task were decomposed using non-negative matrix factorization into synergy and weight matrices, and cross-task weights for each task were then reconstructed by employing the base matrices from different tasks. Support Vector Machine and Extreme Learning Machine classifiers were used to classify the resulting weights in order to compare their performance, as well as their behaviors as a function of synergy rank. Both algorithms showed robust and significantly higher performance, compared to two distinct randomized controls, with lower rank EMG representations, both within and between tasks/postures, supporting hypotheses of functional invariance of multi-muscle synergies. Our results suggest that this invariance could be leveraged to efficiently calibrate postures for prosthetic hand implementation by transferring learned EMG patterns from unconstrained movements to other tasks.

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利用低维子空间进行转移学习,以 EMG 为基础对手部姿势进行分类。
本研究提出了一种评估肌肉协同作用任务不变性的新方法,这对于改善假手控制的潜在实施至关重要。我们使用迁移学习范式来测试相对较少的手部/前臂肌肉协同作用的不变性,这些协同作用来自于手指拼写、模仿姿势抓握和无约束探索等自主行为过程中的肌电图(EMG)激活模式。使用非负矩阵因式分解法将每个任务的肌电图分解为协同作用矩阵和权重矩阵,然后利用不同任务的基础矩阵重建每个任务的跨任务权重。支持向量机和极限学习机分类器被用来对得到的权重进行分类,以比较它们的性能以及它们作为协同等级函数的行为。与两种不同的随机对照相比,这两种算法在任务/姿势内部和任务/姿势之间都显示出较低等级的 EMG 表征,表现出稳健且显著较高的性能,支持了多肌肉协同功能不变性的假设。我们的研究结果表明,可以利用这种不变性,将从无约束运动中学到的肌电图模式转移到其他任务中,从而有效地校准假手实施的姿势。
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