HCLGSPDec 21, 2019

Unsupervised Domain Adversarial Self-Calibration for Electromyographic-based Gesture Recognition

arXiv:1912.11037v558 citations
Originality Incremental advance
AI Analysis

This addresses the impracticality of frequent recalibration for users of myoelectric control systems, though it is an incremental improvement over existing domain adversarial and self-calibrating algorithms.

The paper tackles the problem of maintaining performance in electromyographic-based gesture recognition over multiple days without recalibration by proposing SCADANN, which substantially improves classification accuracy across all tested cases compared to no recalibration and other state-of-the-art methods.

Surface electromyography (sEMG) provides an intuitive and non-invasive interface from which to control machines. However, preserving the myoelectric control system's performance over multiple days is challenging, due to the transient nature of the signals obtained with this recording technique. In practice, if the system is to remain usable, a time-consuming and periodic recalibration is necessary. In the case where the sEMG interface is employed every few days, the user might need to do this recalibration before every use. Thus, severely limiting the practicality of such a control method. Consequently, this paper proposes tackling the especially challenging task of unsupervised adaptation of sEMG signals, when multiple days have elapsed between each recording, by introducing Self-Calibrating Asynchronous Domain Adversarial Neural Network (SCADANN). SCADANN is compared with two state-of-the-art self-calibrating algorithms developed specifically for deep learning within the context of EMG-based gesture recognition and three state-of-the-art domain adversarial algorithms. The comparison is made both on an offline and a dynamic dataset (20 participants per dataset), using two different deep network architectures with two different input modalities (temporal-spatial descriptors and spectrograms). Overall, SCADANN is shown to substantially and systematically improves classification performances over no recalibration and obtains the highest average accuracy for all tested cases across all methods.

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