基于序列神经网络和GPDM判别训练算法相结合的词识别

Wen-Yuan Chen, Sin-Horng Chen
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引用次数: 4

摘要

提出了一种基于序列神经网络和基于广义概率下降法(GPDM)的判别训练算法相结合的孤立词识别方法。序列神经网络通过动态规划处理语音的时间变化,并采用GPDM判别训练算法在评分过程中通过增强易混淆词的识别音来识别易混淆词。用100位说话人的普通话数字数据库对该方法的性能进行了评价。训练数据的识别率为99.1%,测试数据的识别率为96.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Word recognition based on the combination of a sequential neural network and the GPDM discriminative training algorithm
The authors propose an isolated-word recognition method based on the combination of a sequential neural network and a discriminative training algorithm using the Generalized Probabilistic Descent Method (GPDM). The sequential neural network deals with the temporal variation of speech by dynamic programming, and the GPDM discriminative training algorithm is used to discriminate easily confused words by enhancing the distinguishing sounds of them during the scoring procedure. A Mandarin digit database uttered by 100 speakers was used to evaluate the performance of this method. The recognition rates are 99.1% on training data and 96.3% on testing data.<>
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