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A Speech Recognition Method of Isolated Words Based on Modified LPC Cepstrum

机译:基于修饰LPC综注的孤立词语语音识别方法

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The measurement of Mel spectrum distortion is a kind of warped frequency spectrum distortion measure. Using Mel frequency scale can reflect sufficiently the nonlinear perceptive characteristic of human hearings to frequency and amplitude. It can also reflect the frequency analysis and spectrum synthesis characteristics when human hear complex sounds. Aiming at speech recognition of isolated words, an improved algorithm for normal LPC cpestrum feature is put forward in this paper. That is, LPC cpestrum (LPCC) is changed nonlinear by Mel scale according to auditory characteristic, and the LPC Mel cepstrum coefficient (LPCMCC) is used as feature parameter. The speech recognition of isolated words is carried on through using RBF neural network. The experimental results show that LPCMCC feature parameter is better than LPCC feature parameter in SNRs and recognition rate. Keywords--LPCMCC, RBF, speech recognition
机译:MEL频谱失真的测量是一种翘曲频谱失真度量。使用MEL频率可以将人类听觉的非线性感知特性充分反映到频率和幅度。当人类听到复杂声音时,它还可以反映频率分析和频谱合成特征。针对孤立词语的语音识别,本文提出了一种改进的正常LPC CPESTRUM特征算法。也就是说,LPC CPESTRUM(LPCC)根据听觉特性通过MEL规模改变非线性,并且LPC MEL谱系距(LPCMCC)用作特征参数。通过使用RBF神经网络进行隔离词的语音识别。实验结果表明,LPCMCC特征参数优于SNRS和识别率的LPCC功能参数。关键词 - LPCMCC,RBF,语音识别

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