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Voiceless Bangla vowel recognition using sEMG signal

机译:使用sEMG信号进行无声孟加拉语元音识别

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摘要

Some people cannot produce sound although their facial muscles work properly due to having problem in their vocal cords. Therefore, recognition of alphabets as well as sentences uttered by these voiceless people is a complex task. This paper proposes a novel method to solve this problem using non-invasive surface Electromyogram (sEMG). Firstly, eleven Bangla vowels are pronounced and sEMG signals are recorded at the same time. Different features are extracted and mRMR feature selection algorithm is then applied to select prominent feature subset from the large feature vector. After that, these prominent features subset is applied in the Artificial Neural Network for vowel classification. This novel Bangla vowel classification method can offer a significant contribution in voice synthesis as well as in speech communication. The result of this experiment shows an overall accuracy of 82.3 % with fewer features compared to other studies in different languages.
机译:尽管由于声带有问题,但面部肌肉可以正常工作,但有些人却无法发出声音。因此,识别这些清音人员说出的字母和句子是一项复杂的任务。本文提出了一种使用无创表面肌电图(sEMG)解决此问题的新方法。首先,发出11个孟加拉元音并同时记录sEMG信号。提取不同的特征,然后应用mRMR特征选择算法从大特征向量中选择突出的特征子集。之后,将这些突出的特征子集应用于人工神经网络进行元音分类。这种新颖的孟加拉语元音分类方法可以在语音合成以及语音通信中做出重要贡献。与其他使用不同语言的研究相比,该实验的结果表明总体准确性为82.3%,具有更少的功能。

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