连续语音识别中语音模型噪声补偿的在线模型自适应方法

R. Lee, E. Choi
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引用次数: 0

摘要

提出了一种基于并行模型组合(PMC)方法的在线模型自适应方法。该方法利用高斯模型聚类的概念,减少了PMC的计算量。该模型聚类与一组派生的变换方程相结合,为噪声语音识别中的在线模型自适应提供了一个潜在的框架。与标准PMC方法相比,该方法减少了约45%的自适应计算量,在连接数字任务和大词汇量普通话任务上的平均改进仅为18%和9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An online model adaptation method for compensating speech models for noise in continuous speech recognition
This paper presents a method for online model adaptation based on the parallel model combination (PMC) method. The proposed method makes use of the concept of Gaussian model clustering to reduce the computation load required by PMC. This model clustering, in combination with a set of derived transformation equations, provide a potential framework for online model adaptation in noisy speech recognition. The proposed method reduces the computation in adaptation by about 45% with only a slight degradation in improvements of an average 18% for a connected digit task and 9% for a large vocabulary Mandarin task when compared with standard PMC method.
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