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Support vector machines in classifying normal and aggressive muscle actions of electrophysiological entropies

机译:支持向量机分类电生理熵的正常和侵蚀肌动作

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In the present study, entropy values of EMG series, collected from arms and legs of healthy volunteers by using 8 recording channels in both normal and agressive actions, by using six different methods (Lempel-Ziv Entropy, Shannon Entropy (ShanEn), Logarithmic Energy Entropy, Approximate Entropy, Sample Entropy, Permutation Entropy (PermEn) have been classified with respect to three feature sets (all channels, only arms, only legs). In classification step; non-linear Support Vector Machines) with 5-fold cross validaiton was examined. The results show that stimulus parameters that stimulate muscle cells affect the level of complexity of EMG series. ShanEn and PermEn provide the best performance in classifying physical actions by means of EMG. The performance of both approaches have been improved by using Ensemble Learning with marginal function in classifying contrast physical actions. Measurements must be segmented to analyze EMG series.
机译:在本研究中,通过使用六种不同的方法(LEMPEL-ZIV熵,Shannon Entopy(Shanen),对数能量,从正常和激进的动作中使用8个记录通道收集EMG系列的熵值,从健康志愿者的武器和腿部收集。熵,近似熵,样本熵,排列熵(彼得科)已经分类为三个特征集(所有频道,只有武器,只腿部)。在分类步骤中;非线性支持向量机),具有5倍的交叉validaiton检查了。结果表明,刺激肌细胞的刺激参数会影响EMG系列的复杂程度。 Shanen和Peren在通过EMG划分物理行为的最佳表现。通过使用与分类对比物理动作进行对比物理动作的边缘函数来改善两种方法的性能。必须进行测量以分析EMG系列。

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