基于约束mle的L1正则化说话人自适应

Younggwan Kim, Hoirin Kim
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引用次数: 2

摘要

最大后验自适应是获得特定说话人声学模型的常用方法之一。从根本上说,MAP自适应对说话人自适应(SA)模型的数据存储需求与独立说话人模型的数据存储需求一样多。现代语音识别系统有大量的参数和处理数以百万计的用户。为了减少SA模型的数据存储,本文提出了一种基于L1正则化的约束最大似然估计的说话人自适应方法。与传统的稀疏MAP自适应方法相比,该方法可以更有效地对SA模型进行模型调整,而几乎没有损失手机识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constrained MLE-based speaker adaptation with L1 regularization
Maximum a posterior (MAP) adaptation is one of the popular and powerful methods for obtaining a speaker-specific acoustic model. Basically, MAP adaptation needs a data storage for speaker adaptive (SA) model as much as speaker independent (SI) model needs. Modern speech recognition systems have a huge number of parameters and deal with millions of users. To reduce the data storage for SA models, in this paper, we propose a constrained maximum likelihood estimation-based speaker adaptation with L1 regularization. By the proposed method, we can more efficiently perform the model adjustments for SA models without almost any loss of phone recognition performance than the conventional sparse MAP adaptation method.
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