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基于穿戴式 A 型超声和级联模型的手势分类与力估计策略。

A Simultaneous Gesture Classification and Force Estimation Strategy Based on Wearable A-Mode Ultrasound and Cascade Model.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2022;30:2301-2311. doi: 10.1109/TNSRE.2022.3196926. Epub 2022 Aug 22.

DOI:10.1109/TNSRE.2022.3196926
PMID:35930512
Abstract

The existing Human-Machine Interfaces (HMI) based on gesture recognition using surface electromyography (sEMG) have made significant progress. However, the sEMG has inherent limitations as well as the gesture classification and force estimation have not been effectively combined. There are limitations in applications such as prosthetic control and clinical rehabilitation, etc. In this paper, a grasping gesture and force recognition strategy based on wearable A-mode ultrasound and two-stage cascade model is proposed, which can simultaneously estimate the force while classifying the grasping gesture. This paper experiments five grasping gestures and four force levels (5-50%MVC). The results demonstrate that the performance of the proposed model is significantly better than that of the traditional model both in classification and regression (p < 0.001). Additionally, the two-stage cascade regression model (TSCRM) used the Gaussian Process regression model (GPR) with the mean and standard deviation (MSD) feature obtains excellent results, with normalized root-mean-square error (nRMSE) and correlation coefficient (CC) of 0.10490.0374 and 0.94610.0354, respectively. Besides, the latency of the model meets the requirement of real-time recognition (T < 15ms). Therefore, the research outcomes prove the feasibility of the proposed recognition strategy and provide a reference for the field of prosthetic control, etc.

摘要

基于表面肌电 (sEMG) 的手势识别现有人机界面 (HMI) 取得了重大进展。然而,sEMG 存在固有局限性,并且手势分类和力估计尚未有效结合。在假肢控制和临床康复等应用中存在局限性。本文提出了一种基于可穿戴 A 型超声和两级级联模型的抓握手势和力识别策略,该策略可以在分类抓握手势的同时估计力。本文对五种抓握手势和四种力水平 (5-50%MVC) 进行了实验。结果表明,与传统模型相比,所提出的模型在分类和回归方面的性能均有显著提高 (p<0.001)。此外,两级级联回归模型 (TSCRM) 使用具有均值和标准差 (MSD) 特征的高斯过程回归模型 (GPR) 获得了出色的结果,归一化均方根误差 (nRMSE) 和相关系数 (CC) 分别为 0.10490.0374 和 0.94610.0354。此外,该模型的延迟满足实时识别的要求 (T<15ms)。因此,研究结果证明了所提出的识别策略的可行性,为假肢控制等领域提供了参考。

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