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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >A Gaussian mixture model based classification scheme for myoelectric control of powered upper limb prostheses
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A Gaussian mixture model based classification scheme for myoelectric control of powered upper limb prostheses

机译:基于高斯混合模型的动力上肢假体肌电控制分类方案

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This paper introduces and evaluates the use of Gaussian mixture models (GMMs) for multiple limb motion classification using continuous myoelectric signals. The focus of this work is to optimize the configuration of this classification scheme. To that end, a complete experimental evaluation of this system is conducted on a 12 subject database. The experiments examine the GMMs algorithmic issues including the model order selection and variance limiting, the segmentation of the data, and various feature sets including time-domain features and autoregressive features. The benefits of postprocessing the results using a majority vote rule are demonstrated. The performance of the GMM is compared to three commonly used classifiers: a linear discriminant analysis, a linear perceptron network, and a multilayer perceptron neural network. The GMM-based limb motion classification system demonstrates exceptional classification accuracy and results in a robust method of motion classification with low computational load.
机译:本文介绍并评估了使用高斯混合模型(GMM)进行的使用连续肌电信号进行多肢运动分类的情况。这项工作的重点是优化此分类方案的配置。为此,在12个主题的数据库上对该系统进行了完整的实验评估。实验检查了GMM的算法问题,包括模型顺序选择和方差限制,数据分割以及各种特征集,包括时域特征和自回归特征。演示了使用多数表决规则对结果进行后处理的好处。将GMM的性能与三个常用的分类器进行比较:线性判别分析,线性感知器网络和多层感知器神经网络。基于GMM的肢体运动分类系统证明了出色的分类精度,并导致了一种健壮的运动分类方法,且计算负荷较低。

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