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Improving recognition of syallabic units of Hindi languagae using combined features of Throat Microphone and Normal Microphone speech

机译:结合嗓音麦克风和普通麦克风语音功能,提高对印地语音节单位的识别

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The performance of Automatic Speech recognition system (ASR) built using close talk microphones degrades in noisy environments. AS R built using Throat Microphone (TM) speech shows relatively better performance under such adverse situations. However, some of the sounds are not well captured in TM. In this work we explore the combined use of Normal Microphone (NM) and TM features to improve the recognition rate of AS R. In the proposed work, the combined Mel-Frequency Cepstral Coefficients (MFCC) derived from the two signals are used to built an AS R in the HMM framework to recognize the 145 syllabic units of Indian language Hindi. The performance of this combined AS R system shows a significant improvement in performance when compared with individual AS R systems built using NM and TM features, respectively.
机译:在嘈杂的环境中,使用近距离麦克风构建的自动语音识别系统(ASR)的性能会下降。在这种不利情况下,使用喉咙麦克风(TM)语音构建的AS R表现出相对更好的性能。但是,某些声音在TM中无法很好地捕捉。在这项工作中,我们探索了结合使用常规麦克风(NM)和TM功能来提高AS R的识别率。在提出的工作中,使用了从两个信号得出的合并的Mel频率倒谱系数(MFCC)来构建HMM框架中的AS R来识别印度语北印度语的145个音节单位。与分别使用NM和TM功能构建的单个AS R系统相比,此组合AS R系统的性能显示出显着的性能提升。

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