用HMM识别保加利亚语孤立词

S. Hadjitodorov, B. Boyanov, B. Rahardjo
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引用次数: 0

摘要

讨论了隐马尔可夫模型在保加利亚语词汇识别中的应用问题。语音信号被低通滤波到4khz,在10khz采样,并直接进入计算机的内存(IBM PC/XT)。将未发音的片段分开,并评估音高周期。对每个浊音段和浊音段计算12个线性预测编码(LPC)系数。这些段被用作HMM中的状态q/下标i/和它们的LPC系数——一个声学矢量y/下标t/。在训练集的基础上,为每个单词生成HMM。提出了一种改进的贝叶斯决策规则。因此,如果满足决策规则,则分类简单;否则,分类以有序对的形式给出。该方法具有较高的准确率,适用于单词、命令和表达式的识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of isolated words in Bulgarian, by means of HMM
The problem of the recognition of Bulgarian words by means of HMM (hidden Markov models) is discussed. The speech signal was low-pass filtered up to 4 kHz, sampled at 10 kHz, and pushed directly into the computer's memory (IBM PC/XT). Unvoiced segments were separated, and the pitch period was evaluated. For every voiced and unvoiced segment 12 LPC (linear predictive coding) coefficients were computed. These segments were used as states q/sub i/ in HMM and their LPC coefficients-an acoustic vector y/sub t/. On the basis of the training set a HMM for every word was generated. A modified Bayesian decision rule is proposed. As a result, if the decision rule is satisfied, the classification is simple; otherwise, the classification is given in the form of ordered couples. The proposed approach shows higher accuracy and is appropriate for word, command and expression recognition.<>
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