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Optimum Hmm Combined With Vector Quantization For Hindi Speech Word Recognition

机译:最优Hmm与矢量量化相结合的印地语语音单词识别

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摘要

This paper proposes an optimum speaker-independent, isolated word Hidden Markov Model (HMM) recognizer for the Hindi language. The recognition system is based on the combination of the vector quantization (VQ) technique at the acoustical level and the Markovian modeling at the recognition level.The recognizer consists of three modules-feature extraction, vector quantizer and HMM training and testing modules. The scheme proposed here firstly computes the acoustic features in terms of the Linear Predictive Cepstral LPC coefficients, Mel-Frequency Cepstral coefficients and delta MFCC along with noise and silence detection. Then, codebooks are created using VQ, and finally in the recognition phase, an optimum set of parameters are derived from different phases for getting the highest recognition score. The training and testing database consists of a set of 35 utterances of nine Indian cities/states and 35 utterances of nine digits spoken in Hindi by male and female speakers. The recognition rate was observed to be 98.61%.
机译:本文提出了一种最佳的独立于说话者的独立单词隐马尔可夫模型(HMM)识别器,用于印地语。识别系统基于声学上的矢量量化(VQ)技术和识别上的马尔可夫建模的结合。识别器包括三个模块-特征提取,矢量量化以及HMM训练和测试模块。这里提出的方案首先根据线性预测倒谱LPC系数,梅尔频率倒谱系数和MFCC增量以及噪声和静默检测来计算声学特征。然后,使用VQ创建码本,最后在识别阶段,从不同阶段导出最佳参数集以获得最高识别分数。培训和测试数据库由一组来自印度九个城市/州的35种语音和一组由男女讲者在印地语中所说的35种九位数的语音组成。识别率为98.61%。

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