隐马尔可夫模型在面肌电识别手部动作中的综合评价

Yu Hu, Qiao Wang
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引用次数: 3

摘要

肌表电(sEMG)手势识别在肌机接口(MCI)系统和肌电控制辅助装置的开发中具有重要的作用。其识别精度受分类器选择的影响较大。本文在大型无创自适应手假肢数据库(NinaPro)上评估了基于隐马尔可夫模型(HMM)的表面肌电信号手势识别的性能。我们利用表面肌电信号构建了基于HMM的手势识别框架,并利用主体内交叉验证(WSCV)对三种HMM分类器(高斯发射HMM (Gaussian-HMM)、高斯混合HMM (GMM-HMM)和半连续HMM (SCHMM))进行了综合评价。我们的评估基于三种常用的特征集,并在NinaPro数据库的七个基准数据库上进行了实验。在整个NinaPro数据库上的实验结果表明,在评估的HMM分类器中,SCHMM分类器的性能始终是最好的。本文在基准数据库NinaPro上对三种常用HMM分类器进行了综合评估,并在评估过程中提出了新的特征集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive Evaluation of Hidden Markov Model for Hand Movement Recognition with Surface Electromyography
Surface Electromyography (sEMG) gesture recognition plays an important role in developing Muscle-Computer Interface (MCI) system and myoelectric controlled assistive devices. Its recognition accuracy is greatly affected by the selection of classifiers. This paper evaluates the performance of Hidden Markov Model (HMM)-based sEMG hand gesture recognition on the large scale Non-Invasive Adaptive Hand Prosthetic (NinaPro) Database. We conduct an HMM-based hand gesture recognition framework using sEMG signal and make comprehensive evaluations of three HMM classifiers (HMM with Gaussian emission (Gaussian-HMM), HMM with Gaussian Mixture Model (GMM-HMM) and Semi-Continuous-HMM (SCHMM)) using the Within-Subject cross-validation (WSCV). Our evaluation is based on three commonly used feature sets, and the experiments are conducted on seven benchmark databases of the NinaPro Database. The experimental results on the whole NinaPro Database show that SCHMM classifier consistently achieves the best performance among the evaluated HMM classifiers. This work presents comprehensive evaluation of three commonly used HMM classifiers on the benchmark database NinaPro and also proposes a new feature sets during the evaluation.
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