基于空间特征提取的非平稳肌电信号分类

David Hofmann
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引用次数: 1

摘要

我们比较了不同的分类器对肌电信号的分类效果,发现使用独立分量分析提取的空间特征可以提高分类器的分类性能。获得的过滤器可以解释为反映数据源的空间结构。我们发现,几种预处理算法的性能都有所提高,但对不同分类器的相对性能影响不同。当包括静态收缩开始时的非平稳信号时,尤其可以看到关键的性能差异。虽然通过某种分类和预处理算法的组合,目前的数据集似乎达到了实际可用的性能,但为了在更现实的数据集上保持这一水平,仍需进一步优化。
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Spatial Feature Extraction for Classification of Nonstationary Myoelectric Signals
We compare classifiers for the classification of myoelectric signals and show that the performance can be improved by using spatial features that are extracted by independent component analysis. The obtained filters can be interpreted as reflecting the spatial structure of the data source. We find that the performance improves for several preprocessing algorithms, but it affects the relative performance for various classifiers in different ways. A critical performance difference is especially seen when non-stationary signal regimes during the onset of static contractions are included. Although a practically utilizable performance appears to be reached for the present data set by a certain combination of classification and preprocessing algorithms, it remains to be further optimized in order to keep this level for more realistic data sets.
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