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A SPEECH SYNTHESIZER USING FACIAL EMG SIGNALS

机译:使用面部肌电信号的语音合成器

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摘要

This paper proposes a novel phoneme classification method using facial electromyography (EMG) signals. This method makes use of differential EMG signals between muscles for phoneme classification, which enables a speech synthesizer to be constructed using fewer electrodes. The EMG signal is derived as a differential between monopolar electrodes attached to two different muscles, unlike conventional methods in which the EMG signal is derived as a differential between bipolar electrodes attached to the same muscle. Frequency-based feature patterns are then extracted using a filter bank, and the phonemes are classified using a probabilistic neural network, called a reduced-dimensional log-linearized Gaussian mixture network (RD-LLGMN). Since RD-LLGMN merges feature extraction and pattern classification processes into a single network structure, a lower-dimensional feature set that is consistent with classification purposes can be extracted; consequently, classification performance can be improved. Experimental results indicate that the proposed method with a fewer number of electrodes can achieve a considerably high classification accuracy.
机译:本文提出了一种使用面部肌电图(EMG)信号的新音素分类方法。该方法利用肌肉之间的差分EMG信号进行音素分类,从而可以使用更少的电极来构造语音合成器。与常规方法不同,传统方法将EMG信号作为连接到同一块肌肉的双极电极之间的差异,而将EMG信号作为连接到两个不同肌肉的单极电极之间的差异而得出。然后使用滤波器组提取基于频率的特征模式,并使用称为降维对数线性高斯混合网络(RD-LLGMN)的概率神经网络对音素进行分类。由于RD-LLGMN将特征提取和模式分类过程合并到单个网络结构中,因此可以提取与分类目的一致的低维特征集。因此,可以提高分类性能。实验结果表明,所提出的电极数量较少的方法可以实现相当高的分类精度。

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