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HYDON TYPE MARKOV MODEL VOICE RECOGNITION EQUIPMENT

机译:海顿式马尔可夫模型语音识别设备

摘要

Markov model speech pattern templates are formed for speech analysis systems by analyzing identified speech patterns to generate frame sequences of acoustic feature signals representative thereof. The speech pattern template is produced by iteratively generating succeeding Markov model signal sets starting with an initial Markov model signal set. Each iteration includes forming a set of signals representative of the current iteration Markov model of the identified speech pattern responsive to said frame sequences of acoustic feature signals and one of the previous Markov model signal sets and comparing the current iteration Markov model signal set with said previous Markov model signal set to generate a signal corresponding to the similarity therebetween. The iterations are terminated when said similarity signal is equal to or smaller than a predetermined value and the last formed Markov model signal set is selected as a reference template for said identified speech pattern. The state transition model has increased accuracy by grouping the feature signals into related clusters corresponding to states of the previous state transitional model, whereby with further grouping of the feature signals the continuous probability density function acquires components representing a mixture of different continuous probability density functions.
机译:通过分析识别的语音模式以生成代表其的声学特征信号的帧序列,形成用于语音分析系统的马尔可夫模型语音模式模板。通过从初始马尔可夫模型信号集开始迭代生成后续的马尔可夫模型信号集来生成语音模式模板。每个迭代包括响应于所述声学特征信号的帧序列和先前的马尔可夫模型信号集之一,形成代表所标识的语音模式的当前迭代的马尔可夫模型的一组信号,并将当前迭代的马尔可夫模型信号集与所述先前的马尔科夫模型信号集进行比较。设置马尔可夫模型信号以生成与它们之间的相似性相对应的信号。当所述相似度信号等于或小于预定值时,迭代被终止,并且最后形成的马尔可夫模型信号集被选择作为所述识别的语音模式的参考模板。通过将特征信号分组到与先前状态转换模型的状态相对应的相关聚类中,状态转移模型具有更高的准确性,从而通过特征信号的进一步分组,连续概率密度函数获取表示不同连续概率密度函数的混合的分量。

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