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首页> 外文期刊>International Journal of Modelling, Identification and Control >Alphabet model-based short vocabulary speech recognition for the assessment of profoundly deaf and hard of hearing speeches
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Alphabet model-based short vocabulary speech recognition for the assessment of profoundly deaf and hard of hearing speeches

机译:基于字母模型的短词汇语音识别,用于评估严重的聋哑和难听语音

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摘要

Speech quality will be degraded if any one of the cavities such as vocal, nasal, mouth or oral is imperfect. Even though the cavities are in good condition the children who have problems in the ear cannot reproduce sounds since they cannot hear. Their speech characteristic in terms of recognition accuracy is analysed for nine children in the age group of 10-14 years in their native classical Tamil language. Short vocabulary is considered for this purpose and based on this continuous speech monophone-based and senone-based speech recognition systems are developed. To capture the individual performance, speaker independent models are evaluated using nine-fold cross validation. It is observed that senone-based system performs well for them and they can be categorised as profoundly deaf and hard of hearing depending on their recognition accuracy. But some of them outperform well even though they are profoundly deaf since they have undergone speech therapy earlier. It is further observed that if phoneme model is replaced by simple alphabet model it reduces the system complexity and increases the recognition accuracy in average by 9.57%. Compared to clinical assessment, the present status of hearing impairment is well analysed by using the proposed speech recognition system.
机译:如果声音,鼻腔,嘴巴或口腔中的任何一种不完美,语音质量将下降。即使空腔状况良好,耳朵有问题的孩子也无法听到声音,因为他们听不到声音。根据他们的母语泰米尔语,对10-14岁年龄段的9名儿童的识别准确性进行了语音特征分析。为此目的考虑了短词汇,并基于此连续语音,开发了基于单音和基于senone的语音识别系统。为了捕获个人表演,使用九折交叉验证对独立于说话者的模型进行评估。可以看出,基于senone的系统对它们表现良好,并且根据其识别准确度,可以将其分类为严重的耳聋和听力障碍。但是,即使其中的一些人自从早些时候接受言语治疗以来已经严重失聪,但他们的表现仍然不错。进一步观察到,如果用简单的字母模型代替音素模型,它将降低系统复杂度,并使识别准确率平均提高9.57%。与临床评估相比,使用建议的语音识别系统可以很好地分析听力障碍的现状。

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