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基于肌动电流图信号的手势识别:一种针对手臂姿势变化的自适应框架

Gesture Recognition Through Mechanomyogram Signals: An Adaptive Framework for Arm Posture Variability.

作者信息

Wattanasiri Panipat, Wilson Samuel, Huo Weiguang, Vaidyanathan Ravi

出版信息

IEEE J Biomed Health Inform. 2025 Apr;29(4):2453-2462. doi: 10.1109/JBHI.2024.3483428. Epub 2025 Apr 4.

Abstract

In hand gesture recognition, classifying gestures across multiple arm postures is challenging due to the dynamic nature of muscle fibers and the need to capture muscle activity through electrical connections with the skin. This paper presents a gesture recognition architecture addressing the arm posture challenges using an unsupervised domain adaptation technique and a wearable mechanomyogram (MMG) device that does not require electrical contact with the skin. To deal with the transient characteristics of muscle activities caused by changing arm posture, Continuous Wavelet Transform (CWT) combined with Domain-Adversarial Convolutional Neural Networks (DACNN) were used to extract MMG features and classify hand gestures. DACNN was compared with supervised trained classifiers and shown to achieve consistent improvement in classification accuracies over multiple arm postures. With less than 5 minutes of setup time to record 20 examples per gesture in each arm posture, the developed method achieved an average prediction accuracy of $87.43 %$ for classifying 5 hand gestures in the same arm posture and $64.29 %$ across 10 different arm postures. When further expanding the MMG segmentation window from $200 ,\mathrm{ms}$ to $600 ,\mathrm{ms}$ to extract greater discriminatory information at the expense of longer response time, the intra-posture and inter-posture accuracies increased to $92.32 %$ and $71.75 %$. The findings demonstrate the capability of the proposed method to improve generalization throughout dynamic changes caused by arm postures during non-laboratory usages and the potential of MMG to be an alternative sensor with comparable performance to the widely used electromyogram (EMG) gesture recognition systems.

摘要

在手势识别中,由于肌肉纤维的动态特性以及需要通过与皮肤的电连接来捕捉肌肉活动,跨多种手臂姿势对手势进行分类具有挑战性。本文提出了一种手势识别架构,该架构使用无监督域适应技术和一种无需与皮肤进行电接触的可穿戴肌动图(MMG)设备来应对手臂姿势带来的挑战。为了处理因手臂姿势变化而导致的肌肉活动的瞬态特征,采用连续小波变换(CWT)与域对抗卷积神经网络(DACNN)相结合的方法来提取MMG特征并对手势进行分类。将DACNN与监督训练的分类器进行比较,结果表明在多种手臂姿势下,DACNN在分类准确率上均有持续提升。所开发的方法在每个手臂姿势下记录每个手势20个示例的设置时间不到5分钟,对于同一手臂姿势下的5种手势分类,平均预测准确率达到87.43%,在10种不同手臂姿势下的平均预测准确率为64.29%。当进一步将MMG分割窗口从200毫秒扩展到600毫秒以提取更多的判别信息,但代价是响应时间变长时,姿势内和姿势间的准确率分别提高到92.32%和71.75%。研究结果表明,所提出的方法能够在非实验室使用过程中因手臂姿势引起的动态变化中提高泛化能力,并且MMG有潜力成为一种性能与广泛使用的肌电图(EMG)手势识别系统相当的替代传感器。

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