Department of Neurorehabilitation Engineering, Bernstein Center for Computational Neuroscience, University Medical Center Göttingen, Georg-August University, Göttingen, Germany.
J Neuroeng Rehabil. 2011 May 9;8:25. doi: 10.1186/1743-0003-8-25.
For high usability, myo-controlled devices require robust classification schemes during dynamic contractions. Therefore, this study investigates the impact of the training data set in the performance of several pattern recognition algorithms during dynamic contractions.
A 9 class experiment was designed involving both static and dynamic situations. The performance of various feature extraction methods and classifiers was evaluated in terms of classification accuracy.
It is shown that, combined with a threshold to detect the onset of the contraction, current pattern recognition algorithms used on static conditions provide relatively high classification accuracy also on dynamic situations. Moreover, the performance of the pattern recognition algorithms tested significantly improved by optimizing the choice of the training set. Finally, the results also showed that rather simple approaches for classification of time domain features provide results comparable to more complex classification methods of wavelet features.
Non-stationary surface EMG signals recorded during dynamic contractions can be accurately classified for the control of multi-function prostheses.
为了实现高可用性,肌电控制设备在动态收缩过程中需要稳健的分类方案。因此,本研究探讨了在动态收缩过程中,几种模式识别算法在训练数据集的影响。
设计了一个 9 类实验,涉及静态和动态两种情况。通过分类准确性评估了各种特征提取方法和分类器的性能。
结果表明,结合检测收缩起始的阈值,在静态条件下使用的当前模式识别算法在动态情况下也能提供相对较高的分类准确性。此外,通过优化训练集的选择,测试的模式识别算法的性能显著提高。最后,结果还表明,对于时域特征的分类,相对简单的方法可以提供与小波特征的更复杂分类方法相当的结果。
可以对动态收缩过程中记录的非平稳表面肌电信号进行准确分类,以实现多功能假肢的控制。