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Principal Components Analysis Preprocessing for Improved Classification Accuracies in Pattern-Recognition-Based Myoelectric Control

机译:基于成分识别的肌电控制中主成分分析预处理可提高分类精度

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摘要

Information extracted from multiple channels of the surface myoelectric signal (MES) recording sites can be used as inputs to control systems for powered upper limb prostheses. For small, closely spaced muscles, such as the muscles in the forearm, the detected MES often contains contributions from more than one muscle, the contribution from each specific muscle being modified by the dispersive propagation through the volume conductor between the muscle and the detection points. In this paper, the measured raw MES signals are rotated by class-specific principal component matrices to spatially decorrelate the measured data prior to feature extraction. This “tunes” the data to allow a pattern recognition classifier to better discriminate the test motions. This processing technique was used to significantly ($p; ≪;0.01$) reduce pattern recognition classification error for both intact limbed and transradial amputee subjects.
机译:从表面肌电信号(MES)记录部位的多个通道中提取的信息可以用作动力上肢假体控制系统的输入。对于较小的,间隔较近的肌肉(例如前臂的肌肉),检测到的MES通常包含不止一个肌肉的贡献,每个特定肌肉的贡献都通过在肌肉和检测点之间通过体积导体的分散传播而被修改。 。在本文中,测量的原始MES信号通过特定于类的主成分矩阵旋转,以在特征提取之前对测量数据进行空间去相关。这将“调整”数据,以允许模式识别分类器更好地区分测试运动。该处理技术用于显着($ p;≪; 0.01 $)减少完整肢体和trans骨截肢者的模式识别分类错误。

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