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Use of regularized discriminant analysis improves myoelectric hand movement classification

机译:使用正则判别分析可改善肌电手运动分类

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Linear discriminant analysis (LDA) is the most commonly used classification method for movement intention decoding from myoelectric signals. In this work, we review the performance of various discriminant analysis variants on the task of hand motion classification. We demonstrate that optimal classification performance is achieved with regularized discriminant analysis (RDA), a method which generalizes various class-conditional Gaussian classifiers, including LDA, quadratic discriminant analysis (QDA), and Gaussian naive Bayes (GNB). The RDA method offers a continuum between these models via tuning two hyper-parameters which control the amount of regularization applied to the estimated covariance matrices. In this study, we performed a systematic classification performance comparison on four datasets. Hand motion was decoded from myoelectric and inertial data recorded from 60 able-bodied and 12 amputee subjects whilst they performed a range of 40 movements. We found that when the regularization parameters of the RDA classifier were carefully tuned via cross-validation, classification accuracy was statistically higher by a large margin as compared to any other discriminant analysis method (average improvement of 13.7% over LDA). Importantly, our findings were consistent across the able-bodied and amputee populations. This observation provides supporting evidence that our proposed methodology could improve the performance of pattern recognition-based myoelectric prostheses.
机译:线性判别分析(LDA)是从肌电信号解码运动意图的最常用分类方法。在这项工作中,我们回顾了手运动分类任务上各种判别分析变量的性能。我们证明了使用正则判别分析(RDA)可以实现最佳分类性能,该方法可以归纳各种分类条件的高斯分类器,包括LDA,二次判别分析(QDA)和高斯朴素贝叶斯(GNB)。 RDA方法通过调整两个超参数来提供这些模型之间的连续性,这两个超参数控制应用于估计协方差矩阵的正则化量。在这项研究中,我们对四个数据集进行了系统的分类性能比较。从60位身体健全的受试者和12位截肢者的记录的肌电和惯性数据中解码了手部运动,而他们进行了40次运动。我们发现,当通过交叉验证对RDA分类器的正则化参数进行仔细调整时,与其他任何判别分析方法相比,分类准确性在统计上要高出很多(与LDA相比平均提高了13.7%)。重要的是,我们的研究结果在健全人群和截肢人群中是一致的。该观察结果提供了支持性证据,表明我们提出的方法可以改善基于模式识别的肌电假体的性能。

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