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Classification of multichannel uterine EMG signals by using unsupervised competitive learning

机译:使用无监督的竞争学习来分类多通道子宫内窥镜EMG信号

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Multichannel analysis is an innovative technique used for the analysis of bioelectrical signals. In this paper, we analyzed uterine Electromyogram (EMG) signals recorded by means of a 4×4 electrode matrix positioned on the woman's abdomen by using a multichannel approach. Relevant features were extracted from each channel and fed to a competitive neural network (CNN). First, we evaluated the classification performance of each channel. Then, we compared these performances to see which channel ranks better than the others. Finally, a decision fusion method based on the weighted sum of the individual decision of each channel was tested. The results showed that data can be grouped into 2 different groups. Furthermore, they showed that the classification performance varies according to the position of the electrode. Therefore, when a decision fusion rule was applied, the network yielded better classification accuracy than any individual channel could provide. These encouraging results prove that multichannel analysis can improve the classification of uterine EMG signals.
机译:多通道分析是一种用于分析生物电信号的创新技术。在本文中,我们通过使用多通道方法分析了通过位于女性腹部上的4×4电极矩阵记录的子宫电灰度(EMG)信号。从每个通道中提取相关特征,并馈送到竞争性神经网络(CNN)。首先,我们评估了每个频道的分类性能。然后,我们比较了这些表演,以了解哪个频道比其他频道更好。最后,测试了基于每个通道的各个频道决定的加权之和的决策融合方法。结果表明,数据可以分为2种不同的组。此外,他们表明,分类性能根据电极的位置而变化。因此,当应用决策融合规则时,该网络产生了比任何单个频道都提供的更好的分类精度。这些令人鼓舞的结果证明,多通道分析可以改善子宫EMG信号的分类。

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