从零到少拍:腕部肌电图的深度时间学习实现可扩展的跨用户手势识别。

IF 3.8
Fady S Botros, Heather E Williams, Angkoon Phinyomark, Erik J Scheme
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引用次数: 0

摘要

目的:手腕肌电图(EMG)正在成为人机交互的一种诱人的可穿戴输入方式。传统上从前臂记录用于经桡骨假肢,基于手腕的肌电传感器现在被集成到手表和腕带等设备中,用于手势识别(HGR)。消费者对腕带设备的熟悉使腕表肌电图成为一个令人信服的选择,但个性化用户校准的需求仍然是一个挑战。方法:因此,本研究评估了各种跨用户模型以减少校准负担,并比较了基于手腕和前臂的模型。在33个用户中评估了8种不同的机器学习架构,使用了来自最终用户的不同数量的数据。主要研究结果:首次将时间卷积网络-双向长短期记忆(TCN-BiLSTM)架构应用于肌电图分类,发现其具有显著的(p)意义:这些发现提供了新的证据,支持手腕肌电图用于跨用户HGR模型的可行性,该模型可以在最小校准的情况下推广到新用户,表明其在可穿戴设备中的应用前景广阔。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From zero- to few-shot: deep temporal learning of wrist EMG enables scalable cross-user gesture recognition.

Objective.Wrist electromyography (EMG) is emerging as an enticing wearable input modality for human-machine interaction. Traditionally recorded from the forearm for use in transradial prostheses, wrist-based EMG sensors are now being integrated into devices such as watches and wristbands for hand gesture recognition (HGR). Consumer familiarity with wrist-worn devices makes wrist EMG a compelling option, but the need for individualized user calibration remains a challenge.Approach.This study therefore evaluated various cross-user models to reduce the calibration burden and compared wrist- and forearm-based models. Eight different machine learning architectures were evaluated across 33 users, using varying amounts of data from the end user.Main results.A temporal convolutional network-bidirectional long short-term memory architecture, applied for the first time to EMG classification, was found to significantly (p < 0.05) outperform other tested machine learning architectures. An inter-day feature set combined withZ-score normalization achieved the best performance when classifying five gestures (plus a rest class) using either wrist or forearm EMG. Consistent with other recent results, wrist EMG consistently outperformed forearm EMG in all analyses, including within- and across-user comparisons (p < 0.05). In cross-user models, wrist EMG demonstrated a zero-shot performance of 78.2%, compared to 71.6% for forearm EMG (p < 0.05). Introducing one calibration repetition from the end user increased one-shot performance of wrist EMG to 91.6%, compared to 86.9% for forearm EMG (p < 0.05). Adding further training repetitions boosted wrist EMG performance to 98.3%, compared to 97.4% for forearm EMG.Significance.These findings provide new evidence supporting the viability of wrist EMG for cross-user HGR models that generalize to new users with minimal calibration, suggesting promising potential for its broader adoption in wearable devices.

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